• <tr id="yyy80"></tr>
  • <sup id="yyy80"></sup>
  • <tfoot id="yyy80"><noscript id="yyy80"></noscript></tfoot>
  • 99热精品在线国产_美女午夜性视频免费_国产精品国产高清国产av_av欧美777_自拍偷自拍亚洲精品老妇_亚洲熟女精品中文字幕_www日本黄色视频网_国产精品野战在线观看 ?

    Sentiment Analysis of Low-Resource Language Literature Using Data Processing and Deep Learning

    2024-05-25 14:40:30AizazAliMaqboolKhanKhalilKhanRehanUllahKhanandAbdulrahmanAloraini
    Computers Materials&Continua 2024年4期

    Aizaz Ali ,Maqbool Khan,2 ,Khalil Khan ,Rehan Ullah Khan and Abdulrahman Aloraini,?

    1Department of IT and Computer Science,Pak-Austria Fachhochschule:Institute of Applied Sciences and Technology,Haripur,22620,Pakistan

    2Software Competence Center Hagenberg,Softwarepark 32a,Hagenberg,4232,Austria

    3Department of Computer Science,School of Engineering and Digital Sciences,Nazarbayev University,Astana,010000,Kazakhstan

    4Department of Information Technology,College of Computer,Qassim University,P.O.Box 1162,Buraydah,Saudi Arabia

    ABSTRACT Sentiment analysis,a crucial task in discerning emotional tones within the text,plays a pivotal role in understanding public opinion and user sentiment across diverse languages.While numerous scholars conduct sentiment analysis in widely spoken languages such as English,Chinese,Arabic,Roman Arabic,and more,we come to grappling with resource-poor languages like Urdu literature which becomes a challenge.Urdu is a uniquely crafted language,characterized by a script that amalgamates elements from diverse languages,including Arabic,Parsi,Pashtu,Turkish,Punjabi,Saraiki,and more.As Urdu literature,characterized by distinct character sets and linguistic features,presents an additional hurdle due to the lack of accessible datasets,rendering sentiment analysis a formidable undertaking.The limited availability of resources has fueled increased interest among researchers,prompting a deeper exploration into Urdu sentiment analysis.This research is dedicated to Urdu language sentiment analysis,employing sophisticated deep learning models on an extensive dataset categorized into five labels: Positive,Negative,Neutral,Mixed,and Ambiguous.The primary objective is to discern sentiments and emotions within the Urdu language,despite the absence of well-curated datasets.To tackle this challenge,the initial step involves the creation of a comprehensive Urdu dataset by aggregating data from various sources such as newspapers,articles,and social media comments.Subsequent to this data collection,a thorough process of cleaning and preprocessing is implemented to ensure the quality of the data.The study leverages two well-known deep learning models,namely Convolutional Neural Networks(CNN)and Recurrent Neural Networks(RNN),for both training and evaluating sentiment analysis performance.Additionally,the study explores hyperparameter tuning to optimize the models’efficacy.Evaluation metrics such as precision,recall,and the F1-score are employed to assess the effectiveness of the models.The research findings reveal that RNN surpasses CNN in Urdu sentiment analysis,gaining a significantly higher accuracy rate of 91%.This result accentuates the exceptional performance of RNN,solidifying its status as a compelling option for conducting sentiment analysis tasks in the Urdu language.

    KEYWORDS Urdu sentiment analysis;convolutional neural networks;recurrent neural network;deep learning;natural language processing;neural networks

    1 Introduction

    Sentiment analysis serves the purpose of determining the unlikeness of text and understanding people’s perspectives on a given subject.Sentiment analysis is a way that can be used to analyze emotions in paragraphs,phrases,or even clauses.It can also be used to find indicators like grief,anger,fear,happiness,and more,which helps the reader better understand the mood that is being represented in the text.Its primary focus is on classifying text as positive,negative,neutral applicable to paragraphs,sentences,or clauses[1].Many languages,especially highly resourced ones like English,Chinese,Arabic,and Roman,use sentiment analysis extensively.But the difficulties become more apparent when we focus on languages like Urdu that have little resources accessible.Given that a sizable portion of the population speaks Urdu,the lack of linguistic resources presents a special challenge to efficient sentiment analysis.To overcome these resource limitations,novel strategies and specialized models that are adapted to the subtleties of the Urdu language are needed.This will guarantee a more precise and perceptive analysis of the emotions represented in Urdu literature.It is crucial to examine Urdu text sentiment considering the rise in social media usage and the growing dependence on digital platforms for communication.Deep learning algorithms show great promise in fulfilling this need,they can classify sentiment in text with excellent accuracy by utilizing large datasets for training[2].

    The Urdu language,widely spoken in Pakistan and sharing a script like Arabic,Hindi,and Pashtu[3],has seen an increased need for sentiment analysis.Urdu text is characterized by its right-to-left script,and the demarcation between words is not always clearly defined.For instance,the phrase(this is my place)remains comprehensible despite the absence of spaces between words.Deep learning models have emerged as promising tools for analyzing Urdu text sentiments,leveraging extensive datasets for accurate sentiment classification [4].The primary objective of this research is to perform sentiment analysis across varied data sources,encompassing social media comments,Facebook pages,and newspaper articles.Employing supervised deep learning techniques,the author endeavors to construct a resilient model with the ability to predict the polarity of Urdu text data.This approach underscores the comprehensive nature of the study,which seeks to address sentiment analysis across diverse linguistic contexts and platforms using advanced deep learning methodologies.

    By employing natural language processing techniques for text preprocessing,this study embarks on training deep learning models using extensive datasets[5].The resultant trained model exhibits the capacity to predict sentiment in new Urdu text,presenting a potential enhancement in the efficiency of sentiment analysis compared to conventional rule-based and lexicon-based systems.Furthermore,the utilization of deep learning models proves advantageous in mitigating challenges associated with the limited availability of labeled Urdu text data,as these models can adeptly learn from unannotated sources.This multifaceted approach underscores the potential of leveraging deep learning for more robust sentiment analysis in the Urdu language.

    Examining the effectiveness of deep learning models in the sentiment analysis of Urdu literature,this paper conducts a comprehensive review of existing literature,delving into the challenges associated with this domain [6].Through experimental endeavors on a curated dataset of Urdu text,the paper systematically compares the performance of various deep learning models.Notably,the study underscores the critical role of dataset selection and preprocessing techniques in enhancing the accuracy of these models.The findings contribute valuable insights into refining the application of deep learning in sentiment analysis,particularly within the context of Urdu literature.The study explores the potential applications of deep learning models in sentiment analysis of Urdu text,encompassing areas such as political and social media monitoring,customer feedback analysis,and brand reputation management.The capability to accurately classify sentiment in Urdu text presents an opportunity for extracting valuable insights that can inform decision-making within these domains.

    However,despite the promising outcomes exhibited by deep learning models in the analysis of Urdu text,there are notable challenges that persist.Although these models demonstrate remarkable accuracy in recognizing Urdu text,the field of text analysis,especially sentiment analysis(SA),grapples with significant obstacles.One such challenge is the absence of standardized Urdu datasets.Currently,there is a conspicuous lack of a suitable dataset for Urdu text,underscoring the need to develop a comprehensive dataset as an integral part of the proposed solution.The creation of a dedicated dataset is imperative for augmenting the accuracy and effectiveness of deep learning models applied to Urdu text analysis.

    The paper is organized into distinct sections for clarity and coherence.Section 2 provides an overview of related work in the field.In Section 3,the focus shifts to introducing the Urdu literature dataset and detailing the methodology of the proposed model.Section 4 delves into the experiments conducted,presenting the results,and initiating a discussion around them.The paper concludes in the final section,summarizing key findings and implications.This structured approach ensures a systematic presentation of the research,facilitating a comprehensive understanding of the study’s methodology,findings,and concluding remarks.

    2 Related Work

    Sentiment analysis has emerged as a highly researched topic in text analysis over the past decade.This section of the paper delves into recent endeavors and contributions pertaining to Urdu literature,exploring methodologies employed in analogous domains that exert an impact on this field.Various approaches have been put forth to augment the precision of classification results,and these are detailed below[7].

    2.1 Urdu Language

    The paper[8]approach to document-level text classification.Employing a single layer multi size filters convolutional neural network(CNN),the authors aim to address the challenges associated with processing entire documents and capturing contextual information crucial for accurate classification.The streamlined architecture of the CNN,featuring multisize filters,allows for the extraction of hierarchical features,contributing to a nuanced understanding of document content and potentially enhancing classification performance.While the specific experimental results and performance metrics are not detailed in the summary,the paper is expected to provide insights into the effectiveness of the proposed model compared to existing methods.Additionally,discussions on the model’s strengths,potential limitations,and practical implications,as well as suggestions for future research directions,would likely contribute to the overall significance of the proposed document-level text classification method.

    The paper [9] addresses the growing significance of regional language data on the Internet,particularly focusing on Urdu.With an increasing interest in Urdu sentiment analysis,the study introduces the Urdu Text Sentiment Analysis(UTSA)framework,leveraging deep learning techniques and various word vector representations.Stacked layers are applied to sequential models,and the role of pre-trained and unsupervised self-trained embedding models is explored.The results highlight that BiLSTM-ATT outperforms other models,achieving a notable 77.9% accuracy and 72.7% F1 score.The study underscores the effectiveness of deep learning methods in Urdu sentiment analysis,emphasizing the need for further exploration in morphologically rich languages like Urdu.

    The paper [10] explores text classification as a tool for assigning predefined categories to text documents through supervised machine learning algorithms.The study applies five well-known classification techniques to an Urdu language corpus comprising 21,769 news documents across seven categories.Utilizing the concept of majority voting,a class is assigned to each document.Preprocessing techniques such as tokenization,stop words removal,and a rule-based stemmer are applied to make the data suitable for algorithmic processing.

    With 93,400 features extracted after preprocessing,the machine learning algorithms achieve impressive results,attaining up to 94% precision and recall through the majority voting approach.The study showcases the effectiveness of this methodology in the realm of Urdu text classification,with potential applications in diverse fields such as spam detection,sentiment analysis,and natural language detection.

    Iqbal et al.[11] conduct a study on sentiment analysis of social media content in Pashtu,a low-resource language.Employing deep learning techniques including convolutional neural networks(CNN) and long short-term memory (LSTM),the authors aimed to classify Pashtu social media content into positive,negative,and neutral categories.The dataset,manually annotated by native Pashtu speakers,contributed to promising results.CNN achieved an accuracy of 71%,while LSTM outperformed with an accuracy of 73.8%,surpassing other existing models.This study holds significance for Pashtu language processing,offering valuable applications in areas such as opinion mining,market analysis.

    Khattak et al.[12] conduct a comprehensive review of sentiment analysis in Urdu,a resourcepoor language akin to Pashtu script.Analyzing over 50 studies,they highlighted challenges such as a scarcity of linguistic resources and annotated datasets.The study explores various approaches,including lexicon-based and machine learning methods,offering insights into the complexities of Urdu’s morphology and syntax.The authors suggest future research directions,emphasizing the need for more annotated datasets and improved techniques,as well as exploring transfer learning and multilingual models.

    Noor et al.[13]contribute to e-commerce sentiment analysis in Roman Urdu using Support Vector Machines (SVM).The study demonstrates SVM’s effectiveness and provides insights into customer sentiments.It discusses evaluation metrics and calls for further research to compare SVM with other approaches in Roman Urdu text,aiming to enhance decision-making in the e-commerce domain.

    Saad et al.[14] contribute to Pashtu language processing by developing a rule-based stemming algorithm.The proposed algorithm outperformed existing algorithms,achieving an accuracy of 78.6%.This robust stemming algorithm is essential for various natural language processing applications,addressing challenges in low-resource languages like Pashtu.

    Khan et al.[15]present a new dataset of Pashtu handwritten numerals and a deep learning-based algorithm for numeral recognition.The proposed approach achieved a high accuracy of 98.64%on the PHND dataset,providing a valuable resource for researchers working in Pashtu language processing and computer vision,with practical applications in finance and commerce.

    Khalil et al.[16] propose a deep learning-based approach for recognizing Pashtu numerals using CNNs.Their approach achieved an accuracy of 91.4%,outperforming other methods and demonstrating practical applications in digitizing Pashtu manuscripts and historical documents.

    Janisar et al.[17]demonstrate the feasibility of using machine learning techniques to identify hate speech in Pashto language tweets.SVM demonstrated the highest performance with an accuracy of 74%,contributing to hate speech detection in languages beyond English.

    Singh et al.[18]enhance our understanding of Punjabi language morphology using deep learning classification techniques for sentiment analysis.The study provides valuable insights into morphological patterns and demonstrates the effectiveness of deep learning models in analyzing sentiment in Punjabi text.

    Neelam et al.[19] address the overlooked domain of sentiment analysis in resource-poor languages,with a specific focus on Urdu.The researchers collected data from various blogs across 14 different genres and annotated it with the assistance of human annotators.The study employed three well-known classifiers—Support Vector Machine,Decision Tree,and k-Nearest Neighbor (k-NN).However,the initial results were unsatisfactory,with all three classifiers achieving accuracy below 50%.Attempts to improve results through ensemble classifiers did not yield significant improvements.Ultimately,the study concludes that k-NN outperformed Support Vector Machine and Decision Tree in terms of accuracy,precision,recall,and F-measure.

    This conclusion is drawn after a careful analysis of results and subsequent adjustments to enhance classifier performance.The findings highlight the importance of tailored approaches and feature extraction techniques in sentiment analysis for resource-poor languages like Urdu.

    The paper[20]emphasizes the role of sentiment analysis(SA)in decision-making and problemsolving,highlighting the importance of reliable results in biologically inspired machine learning approaches.The research focuses on SA for Urdu,employing five classifiers.Through 10-fold crossvalidation,three top classifiers—Lib SVM,J48,and IBK—are selected based on high accuracy,precision,recall,and F-measure.IBK emerges as the best classifier with 67% of accuracy result.To validate this,sentence labels are predicted using training and test data,and three standard evaluation measures—McNamara’s test,kappa statistic,and root mean squared error—are applied.IBK consistently outperforms others,affirming its status as the most reliable classifier.The study’s contribution lies in its meticulous approach to verification,enhancing confidence in IBK as the optimal choice for Urdu sentiment analysis.

    Khan et al.[21]focus on talking about sentiment analysis(SA)in relation to English and Roman Urdu dialects,especially on social networking sites.To solve these issues,the research suggests a novel deep learning architecture that combines a one-layer CNN model for local feature extraction with Long Short-Term Memory (LSTM) for long-term dependence preservation.The results of the study,which includes comprehensive testing on four corpora,show that the suggested model performs remarkably well in sentiment categorization for both Roman and Urdu text.In particular,on the MDPI,RUSA,RUSA-19,and UCL datasets,the model obtains high accuracy ratings of 0.841,0.740,and 0.748,respectively.The results of the studies show that the Word2Vec CBOW model and the SVM classifier work well for sentiment analysis in Roman Urdu.

    The study[22]examines Opinion Mining within the framework of user evaluations,highlighting the new area of Sentiment Analysis as a means of comprehending consumer sentiment.The research focuses on reviews published in Roman Urdu and presents a methodology to categorize these reviews according to their polarity.A dataset of 24,000 Roman Urdu reviews is produced by gathering raw data from reviews of 20 songs in the Indo-Pak music industry.Nine machine learning techniques are used in this study:ID3,Gradient Boost Tree,k-Nearest Neighbors,Artificial Neural Networks,Convolutional Neural Networks,Recurrent Neural Networks,Support Vector Machines,Na?ve Bayes,and Logistic Regression.Of them,Logistic Regression performs better,with cross-validation and testing accuracies of 91.47%and 92.25%,respectively.

    The paper[23]tackles the issue of sentiment analysis studies being underrepresented in regional or low-resource languages such as Urdu.It gives the Urdu Dataset for Sentiment Analysis-23(UDSA-23) and presents USA-BERT (Urdu Text Sentiment Analysis using Bidirectional Encoder Representations from Transformers),a deep learning-based methodology.The procedure entails using BERT-Tokenizer to preprocess Urdu reviews,generating BERT embeddings for every review,optimizing a deep learning classifier (BERT),and evaluating USA-BERT on two datasets (UCSA-21 and UDSA-23) using the Pareto principle.The evaluation shows notable gains in f-measure and accuracy,outperforming current techniques by as much as 25.87% and 26.09%,respectively.This closes the research gap for low-resource languages and demonstrates the efficacy of USA-BERT in Urdu sentiment analysis.

    In Table 1,a compilation of deep learning-related research discussed in this study is provided.While highlights recent research utilizing diverse deep learning models for sentiment analysis,it is notable that few studies have explored the effects of employing different dataset configurations and accuracy result.Specifically,variations in binary or multiclassification and balanced or imbalanced setups have been relatively underexplored.In this study,a range of datasets featuring five distinct data labels,along with diverse setups,were employed across various models.The research further delved into examining the influence of these different dataset configurations on model accuracy.

    Table 1: Comparison of literature by different models

    3 Materials and Methods

    This section is dedicated to elucidating two prominent deep learning models extensively utilized in sentiment analysis: Convolutional Neural Networks (CNN) and Recurrent Neural Networks(RNN).In this section,the essential components of the proposed solution are delineated.Initially,a comprehensive Urdu literature dataset is created from diverse sources such as Mashriq Newspaper,Seyaq Newspaper,Urdu literature from UOP and different social media content.Subsequently,Urdu sentences undergo a preprocessing and cleaning phase,wherein extraneous text,symbols,and tokens are systematically removed.To facilitate input into the chosen deep neural networks,the cleaned dataset is then prepared for the word embedding step,which was a challenging section of the research.This involves converting texts into vectors using a word embedding method,with Word2Vec being the technique employed in the proposed model[24].Finally,for the training phase,various machine learning models are employed,specifically the CNN model and the RNN model.These models undertake the task of sentiment classification,categorizing input sentences as positive,negative,neutral,mixed,or ambiguous as applicable.

    In the Fig.1,the data is collected from different source and make dataset.Then Urdu sentences underwent a thorough process of cleaning,normalization,and lemmatization[25,26].Subsequently,these cleaned sentences were input into word embeddings,specifically employing Word2Vec in this study.The data vectors generated were then fed into a deep architecture for sentiment analysis to determine polarity.Finally,one of the five labels positive,negative,neutral,mixed,or ambiguous was assigned to characterize the polarity of the analyzed content.

    Figure 1: Deep architecture pipeline

    3.1 Dataset Creation

    In the realm of deep learning,the presence and the use of standard dataset wield significant influence in a proficient sentiment analysis model[27].Prior research on sentiment analysis in Urdu,the imperative arises to construct a dataset from the ground up.The process of constructing a wellorganized dataset entail navigating through several crucial steps.

    3.2 Dataset Collection

    Data collection stands as a pivotal phase in research,facilitating the capture of historical records and patterns that empower models to predict future events.Devising a well-defined strategy for data collection is paramount,especially in the creation of a dataset,involving the identification of data sources and the selection of appropriate methodologies[28].In our research,data collection presented challenges,primarily due to the scarcity of Urdu script data.Given the prevalence of Roman Urdu in communication among Urdu speakers,a deviation from our study’s target,obtaining authentic Urdu language data became a challenge.To overcome this hurdle and secure genuine Urdu language data,we focused on specific sources,namely“Mashriq Newspaper”and“Seyaq Newspaper,”widely read across all provinces of Pakistan.

    Additionally,we incorporated Urdu text from articles sourced from the Urdu Department at the University of Peshawar.In total,approximately 45,000 sentences were gathered to construct the dataset shown in Table 2.This dataset stands as a significant accomplishment,representing one of the initial and most extensive collections of Urdu language data tailored specifically for sentiment analysis.This comprehensive dataset serves as a crucial resource for training and evaluating the sentiment analysis model,empowering it to proficiently analyze and comprehend sentiments expressed in Urdu text.

    Table 2: Collected dataset

    3.3 Data Cleaning

    Data cleaning is an essential step in preparing a dataset for analysis,involving the identification and handling of incorrect,incomplete,or irrelevant data.The quality of the dataset directly impacts model accuracy.In the proposed solution,data observation revealed a mixture of languages and emoticons/emojis in the collected data which is not our target data [29].To ready the dataset for sentiment analysis,a meticulous data cleaning process was executed,including removing English and unwanted Urdu text,as well as symbols(e.g.,“#$%&′()?+,-./:;?@[]∧_`{|}~).The dataset,initially containing mixed and noisy data,was successfully refined,resulting in a focused and high-quality dataset of 38,600 sentences.This reduction in size underscores the effectiveness of the cleaning process in eliminating irrelevant content.

    3.4 Data Preprocessing

    In deep learning,data must be in numeric format.Before encoding text into numerical representations,a pivotal step known as preprocessing text is essential[30].This involves multiple stages,such as:

    1.Eliminate null values from the dataset.

    2.Retain only the“sentiment”and“polarity”columns,discarding any non-required columns.

    3.Remove duplicate entries within the dataset.

    4.Convert values such as “positive,” “negative,” “neutral,” “mixed,” or “ambiguous” into numerical representations.

    5.Tokenize the text column,creating separate lists using NLTK’s sent tokenize.

    6.Exclude stop words from the lists.

    7.Remove non-Urdu characters from the text.

    8.Utilize NLTK’s word tokenize to convert the lists into tokens.

    9.Split the data into training and testing sets.

    Table 3 explains the tokenization,which is implemented during the data preprocessing stage,tokenization emerges as a crucial task.Tokenization,a pivotal step in Natural Language Processing(NLP),entails breaking down a text into distinct units,whether they are words,symbols,phrases,or tokens.This process serves as a foundational element for deep learning models,empowering them to proficiently handle and analyze textual data.

    Table 3: Tokenization of dataset

    3.5 Data Labeling

    Data labeling is a vital process in categorizing information,crucial for training deep learning models to make predictions based on provided labels.In the proposed sentiment analysis,sentences were labeled to indicate positive,negative,neutral,mixed,or ambiguous sentiments.A numeric labeling scheme,where positive is 1,negative is-1,neutral is 0,mixed is 2,and ambiguous is-2,was adopted for efficient processing by deep learning models.Among 38,600 sentences,16,212 were positive,10,422 were negative,6,176 were neutral,3,474 were mixed,and 2,316 were ambiguous.Table 4 details the breakdown of labeled classes,revealing sentiment distribution,while Table 5 showcases annotated comments,providing insights into data annotation in the research.

    Table 5: Dataset sample

    3.6 Model Embedding Word to Vector(Word2Vec)

    Word2Vec employs neural networks to create distributed representations of words in a way that words with similar meanings or contexts are closer together in the vector space.The training process involves adjusting the weights of the neural network to optimize the likelihood of observed word co-occurrences [31,32].It finds applications in various domains,including sentiment classification,named-entity recognition (NER),POS-tagging,and document analysis.Word2Vec employs two methodologies:Skip gram(SG)and continuous bag of words(CBOW)[33].In this research,CBOW was employed following exhaustive experiments,determining its superior performance over SG.Specifically,SG was trained to anticipate the context (surrounding words) of a given word,while CBOW was trained to predict the current word based on its context(given words)[34].In this study,every review was depicted as a 2D vector with dimensions of n x 400,where n represents the number of words in the review,and 400 signifies the length of the vector’s dimension for each word.This approach was implemented to maintain uniform size for all reviews,and each review’s representation was padded with zeros to ensure consistent length across the dataset[35].The methodology aligns with the approach employed in newspaper sentiment analysis using CNNs and RNN[36].

    3.7 Model Implementation

    To do Sentiment Analysis on Urdu literature data,must train a model.This model,tailored for determining the polarity of Pashtu text,is a file that undergoes a learning process utilizing a specific algorithm,enabling it to discern patterns [37].Model creation in deep learning involves two pivotal phases: The initial phase encompasses training the model with a designated algorithm,while the subsequent phase involves testing the model.Model training in deep learning mandates a labeled dataset[38].In this study,three deep learning algorithms—Convolution Neural Network(CNN)and Recurrent Neural Network(RNN)were employed for model training.

    The process begins with a clean and well-structured labeled dataset.The dataset is then loaded,and data preprocessing steps,including tokenization,stemming,and lemmatization using the Hazm library(a python library),are executed to ready the data for training.Prior to training,the dataset is divided into two segments:80%for training and 20%for testing.The model is initially trained using CNN and then through RNN algorithm.This methodology empowers the model to learn from the labeled dataset and subsequently apply this acquired knowledge to analyze the sentiment of Pashtu text data.

    3.7.1 Sentiment Analysis Using CNN

    In this section,the implementation of the proposed Urdu Sentiment Analysis model utilizing the CNN architecture is elucidated.The depicted CNN architecture,as illustrated in Fig.2,delineates the components of the three crucial stages within the proposed system: Dataset insertion,feature extraction,and classification[39].

    Figure 2: CNN architecture of proposed solution

    The flow of the CNN model commences with an embedding layer,responsible for representing words as dense vector representations.Subsequently,a series of convolutional,normalization,maxpooling,and dropout layers are employed in sequential blocks [40].Originally developed for image recognition,the CNN model has proven to be highly effective in Natural Language Processing(NLP)tasks,including text classification[41].

    In this study,the CNN sequential model was constructed,featuring an embedding layer as the model input,one output layer,and convolutional layer blocks.Two fully connected hidden layers (FCLs) were incorporated for text classification.For the input layer word embeddings were utilized based on pre-trained Word2Vec models.ReLU activation functions were applied to both 1D convolutional layers,and batch normalization layers were included to mitigate overfitting.Max pooling 1D layers were employed to reduce the dimensionality of feature maps,with pool sizes of three and two after the first and second convolutions,respectively.The final layer consisted of two dense layers:One in the hidden layer with 1,024 neurons and another in the output layer.

    The number of neurons in the output layer was configured based on the dataset’s class count,using the sigmoid function for binary classification and the Softmax activation function for multiclassification.

    3.7.2 Sentiment Analysis with RNN

    In this study,the RNN algorithm takes center stage for sentiment classification in Urdu literature.What sets RNN apart is its temporal aspect,distinguishing it from other neural networks [42].The algorithm shares an equal number of time steps with both CNN and LSTM,emphasizing its temporal sensitivity in capturing sequential dependencies within the data.This distinctive feature positions RNN as a valuable tool for analyzing the temporal dynamics inherent in Urdu text sentiment,showcasing its relevance and effectiveness in the realm of deep learning.

    The Urdu sentiment analysis model,implemented through RNN models within deep neural networks,follows a systematic flow as shown in Fig.3.Initiated with the input of data,the process includes preprocessing,word embedding using the Word2Vec algorithm,and feature extraction from the dataset through a meticulous selection process [43,44].The subsequent phase involves the neural layer,where activated functions scrutinize the model within hidden layers.This comprehensive approach results in an output that discerns sentiment in Urdu text,categorizing it into five classes:Positive,negative,mixed,or ambiguous.The RNN models contribute to a nuanced understanding of sentiment,showcasing the effectiveness of deep learning in analyzing Urdu text.

    Figure 3: CNN architecture of proposed solution

    4 Experimental Result

    To assess the efficacy of our proposed approach in the realm of multilingual sentiment analysis,we conducted a series of experiments.This section outlines the experimental setup of our solution and subsequently introduces the evaluation of model employed in the assessment.The structured presentation aims to provide clarity on the methodology and criteria used to gauge the performance and robustness of our multilingual sentiment analysis approach.

    4.1 Experimental Setup

    In our experimental setup,we employed a dataset comprising Urdu newspaper content.For the implementation of machine learning tasks,we utilized the Anaconda open-source tool with the Python language.The research tasks were performed using Jupyter Notebook,leveraging TensorFlow—an open-source framework that integrates Keras for implementing deep learning models[45].Specifically,we utilized Recurrent Neural Network(RNN)and Convolutional Neural Network(CNN)architectures,deploying them with TensorFlow and taking advantage of the open-source deep learning library for Python[46].

    This choice of tools and frameworks ensured a robust and flexible environment for our experimentation,encompassing training,implementation,and deployment of the sentiment analysis models.

    4.2 Model Evaluation

    The assessment of RNN and CNN models aimed to measure their performance in sentiment analysis within resource-poor languages.This involved utilizing diverse metrics and criteria to measure their accuracy in classifying sentiments within Urdu literature.Factors like accuracy,precision,recall,F1 score,and confusion matrices were considered in the evaluation process.Through a systematic analysis of these metrics,insights were gained into the performance of RNN and CNN models in sentiment capture and classification,offering a thorough assessment of their capabilities in handling the intricacies of Urdu sentiment analysis.Three distinct data sources were collected and used to create a dataset for the proposed approaches,each with varying configurations.The dataset was divided into training and testing sets,with 80%allocated for training and 20%for testing.This partitioning facilitated a comprehensive evaluation of the models’performance under different conditions and contributed to a deeper understanding of their capabilities across diverse datasets.

    The main objective of this experiment was to compare the performance of CNN and RNN classifiers.Various metrics such as Accuracy,Precision,Recall,and F1 score were employed to assess these classifiers,providing a comprehensive evaluation of their performance across multiple dimensions.The equations for precision,recall,F-measure,and accuracy were sequentially presented to illustrate their calculation.

    These equation metrics collectively offer a comprehensive evaluation of the model’s performance by considering different aspects of prediction accuracy and error.

    5 Results and Discussions

    In this section,the presentation of performance evaluation results for sentiment analysis of Urdu literature using RNN and CNN of DL models is showcased.To perform sentiment analysis,the dataset is categorized into five labels: Label 1 for positive,label -1 for negative,label 0 for neutral,label 2 for mixed,and label-2 for ambiguous sentiments.Deep learning methods are employed for data training,distinguishing valid data for classifier testing post-training.NLTK utilizes various algorithms to eliminate punctuation,stop words,and spaces to identify unique words [47,48].Sklearn employs techniques like text and Word2Vec for feature extraction,incorporating data preprocessing methods.Fig.4 illustrates the model training evaluation on the dataset.

    Figure 4: Model training evaluation

    The ROC curve visually represents the performance of a classification model across various classification thresholds[49,50].In this analysis,the model’s journey is illustrated,starting from 0%predictions,and progressing towards true positive predictions,which signify correct classifications shown in Fig.5.The ROC curve is a graphical representation plotting the True Positive Rate(correct predictions/classifications) against the False Positive Rate (incorrect predictions/classifications) [51].The curve begins at the 0%prediction point and moves towards the upper-left corner as true positive predictions increase.The Receiver Operating Characteristic (ROC) curve serves as a comprehensive indicator of a classification model’s performance at different thresholds,providing valuable insights into its accuracy and capabilities.

    Figure 5: ROC curve model classification

    5.1 Performance Measure

    In this trial,we employed both CNN and RNN learning algorithms to train the model using the identical dataset.We evaluated classifier performance utilizing Accuracy,precision,recall,and F1 score,and the outcomes are presented in Tables 6 and 7,respectively.

    Table 6 and Fig.6 illustrate the performance of the CNN and RNN classifiers for the negative class.The CNN classifier achieved high precision,indicating a minimal number of false positives.It also exhibited an 87%recall rate for detecting negative sentiment,accurately classifying 87%of cases while misclassifying 13%.In the neutral class,recall exceeded precision,suggesting high sensitivity and a reduced number of false negatives.For the positive class,both precision and recall were equal,indicating that the algorithm made an equivalent number of false positive and false negative predictions.This equilibrium is advantageous,signifying that the dataset featured an even distribution of negative and positive sentiments.When precision and recall are equivalent,the F1 score also shares the same value,resulting in identical metrics for all evaluation measures.

    Figure 6: CNN evaluation

    Table 6: CNN performance

    In Table 7 and Fig.7,the RNN classifier demonstrated 89%precision in accurately identifying the negative class,with an 11%error rate.Additionally,the classifier achieved an 89%recall and accuracy rate for correctly recognizing the negative label,along with an 11% error rate.However,for neutral labels,the classifier exhibited an accuracy,precision,and recall rate of 87%and an F1 score of 89%.In contrast,the classifier performed admirably for the positive label,with 91%precision and F1 score,and 89%recall and accuracy.Overall,spanning all five classes,the RNN model consistently achieved a 91%.

    Table 7: RNN performance

    Fig.8 depicts that RNN surpassed CNN,exhibiting higher precision,recall,and F1 scores.Notably,RNN achieved a precision of 91%,outperforming CNN’s 87%,implying superior precision with fewer false positives for RNN.Additionally,RNN demonstrated a 4% higher sensitivity compared to CNN,suggesting a reduction in false negatives.Furthermore,RNN exhibited a 4% higher F1 score,indicative of superior overall performance.

    Figure 7: RNN evaluation

    Figure 8: Model comparison

    6 Conclusion

    Sentiment analysis involves extracting sentiments,attitudes,emotions,and opinions from a given sentence.This research paper explores various sentiment classification techniques,employing two deep learning models,RNN and CNN,along with the Word2Vec algorithm for embedding,to conduct sentiment analysis.The paper specifically emphasizes the use of deep learning models to design a sentiment analysis model for Urdu literature,addressing the challenges posed by a resourcepoor language.One significant challenge is the lack of a proper dataset for model training.In the proposed system,the initial step involves preparing a dataset collected from diverse sources,including newspapers,articles,and social media content.A total of 45,000 sentences were collected and underwent cleaning and preprocessing,utilizing regular expressions to remove English and unwanted text,and manual deletion of some Urdu text and emoticons.Text preprocessing employed the Python library for tokenization,stemming,and lemmatization.After cleaning and preprocessing,the dataset comprised 38,600 sentences with five labels: Positive,Negative,Neutral,Mixed,and Ambiguous.Model evaluation focused on precision,recall,and F1 score,revealing that RNN outperformed CNN,achieving an accuracy approximately 0.4 times higher.In conclusion,the research suggests that RNN is a more suitable technique for sentiment analysis in Urdu literature compared to CNN.

    7 Future Work

    In the future,we are ensuring the model’s evaluation is conducted with an equal distribution of labels,thereby maintaining balance in the assessment process.Also make sure the proposed methodology effectively operates across five distinct label classes,namely Positive,Neutral,Negative,Positive curse,and Negative curse.This refinement aims to broaden the applicability and robustness of the technique across a diverse range of sentiments and expressions.Furthermore,exploring innovative strategies to optimize performance within each specific label category will be a crucial aspect of this future work.Additionally,investigating the impact of these modifications on overall model accuracy and reliability will contribute valuable insights to the ongoing research.

    Acknowledgement:Researchers would like to thank the Deanship of Scientific Research,Qassim University for funding publication of this project.

    Funding Statement:The respective study received no external funding.

    Author Contributions:Conceptualization,A.Ali and M.Khan;methodology,K.Khan;formal analysis,A.Ali;investigation,Y.Y.Ghadi and R.Ullah;resources,M.Khan;data curation,K.Khan;writing—original draft preparation,A.Ali;writing—review and editing,R.Ullah and Y.Y.Ghadi;visualization,A.Ali;supervision,M.Khan and K.Khan;project administration,R.Ullah and A.Aloraini;funding acquisition,A.Aloraini and A.Ali.All authors have read and agreed to the published version of the manuscript.

    Availability of Data and Materials:The data used for the study is currently not available for readers due to privacy and will be published separately after completion of the project.

    Conflicts of Interest:The authors declare that they have no conflicts of interest to report regarding the present study.

    99热这里只有是精品在线观看| 久久久国产欧美日韩av| 国产欧美亚洲国产| 亚洲天堂av无毛| av一本久久久久| 免费观看的影片在线观看| 久久久久久人妻| 久久久久久久久久成人| 午夜日本视频在线| 2018国产大陆天天弄谢| 免费观看无遮挡的男女| 精品一区二区三区视频在线| 精品人妻熟女av久视频| a级毛色黄片| 久久99热6这里只有精品| 久久精品夜色国产| 国产亚洲一区二区精品| 一级av片app| 久久精品国产亚洲av天美| 国产高清三级在线| 人人妻人人爽人人添夜夜欢视频 | 97超视频在线观看视频| av不卡在线播放| 亚洲精品一区蜜桃| 国产av码专区亚洲av| 搡女人真爽免费视频火全软件| 嫩草影院新地址| 久久精品夜色国产| 亚洲人成网站在线观看播放| freevideosex欧美| 午夜免费鲁丝| 免费黄网站久久成人精品| 不卡视频在线观看欧美| 看非洲黑人一级黄片| 色视频在线一区二区三区| 日韩一区二区三区影片| 人人妻人人爽人人添夜夜欢视频 | 久久久久网色| 亚洲三级黄色毛片| 亚洲精品aⅴ在线观看| xxx大片免费视频| 国产精品久久久久成人av| 新久久久久国产一级毛片| 成人免费观看视频高清| 99久久精品热视频| 国产亚洲精品久久久com| av在线app专区| 夫妻性生交免费视频一级片| 菩萨蛮人人尽说江南好唐韦庄| 男男h啪啪无遮挡| 中文字幕亚洲精品专区| av有码第一页| 色吧在线观看| 女性被躁到高潮视频| 在线观看一区二区三区激情| 久久久久久久久久久久大奶| 国产精品三级大全| 国产亚洲一区二区精品| 亚洲久久久国产精品| 街头女战士在线观看网站| 亚洲av电影在线观看一区二区三区| 国产精品99久久99久久久不卡 | 午夜福利网站1000一区二区三区| a级毛片免费高清观看在线播放| 久久久久精品性色| 中文资源天堂在线| 国产欧美日韩综合在线一区二区 | 熟女av电影| av在线观看视频网站免费| 久久久久人妻精品一区果冻| 热re99久久精品国产66热6| 国产伦理片在线播放av一区| 最黄视频免费看| 啦啦啦视频在线资源免费观看| 中文字幕制服av| 五月开心婷婷网| 日韩不卡一区二区三区视频在线| 欧美日韩国产mv在线观看视频| 久久久国产欧美日韩av| 亚洲精品乱码久久久久久按摩| 夫妻午夜视频| 免费看av在线观看网站| 黄色日韩在线| 久久久久精品久久久久真实原创| 高清欧美精品videossex| 99热这里只有是精品50| 午夜日本视频在线| 午夜福利视频精品| 欧美97在线视频| 国内少妇人妻偷人精品xxx网站| 欧美国产精品一级二级三级 | 亚洲欧美成人综合另类久久久| 日本爱情动作片www.在线观看| 中文字幕免费在线视频6| 黄色配什么色好看| 各种免费的搞黄视频| 春色校园在线视频观看| 欧美xxⅹ黑人| 国产男女内射视频| 最近的中文字幕免费完整| 久热这里只有精品99| 欧美日韩一区二区视频在线观看视频在线| 午夜av观看不卡| 午夜久久久在线观看| 亚洲av电影在线观看一区二区三区| 王馨瑶露胸无遮挡在线观看| 午夜激情福利司机影院| 晚上一个人看的免费电影| 在线观看免费视频网站a站| tube8黄色片| 国产综合精华液| 韩国av在线不卡| av专区在线播放| 亚洲av二区三区四区| 国产极品天堂在线| 菩萨蛮人人尽说江南好唐韦庄| 中国国产av一级| 热99国产精品久久久久久7| 狠狠精品人妻久久久久久综合| 国产精品国产av在线观看| 欧美日韩一区二区视频在线观看视频在线| 观看av在线不卡| 偷拍熟女少妇极品色| 麻豆成人午夜福利视频| 晚上一个人看的免费电影| 欧美精品高潮呻吟av久久| 国产伦在线观看视频一区| 中文字幕人妻丝袜制服| 2022亚洲国产成人精品| 五月玫瑰六月丁香| 性色avwww在线观看| 在线免费观看不下载黄p国产| 成人影院久久| 最近手机中文字幕大全| 大片免费播放器 马上看| 丝袜脚勾引网站| 免费黄网站久久成人精品| av视频免费观看在线观看| 国产有黄有色有爽视频| 久久精品国产自在天天线| 少妇的逼好多水| 好男人视频免费观看在线| 久久人人爽人人片av| 国产在线一区二区三区精| 国产伦理片在线播放av一区| 边亲边吃奶的免费视频| 国产成人91sexporn| 免费大片18禁| 欧美 亚洲 国产 日韩一| 免费黄网站久久成人精品| 日韩成人伦理影院| 成年美女黄网站色视频大全免费 | 久久久午夜欧美精品| 精品久久国产蜜桃| 热99国产精品久久久久久7| 丁香六月天网| 久久女婷五月综合色啪小说| 亚洲在久久综合| 久久久a久久爽久久v久久| 日韩欧美一区视频在线观看 | 日韩中文字幕视频在线看片| 黄色怎么调成土黄色| 男人爽女人下面视频在线观看| 蜜桃久久精品国产亚洲av| 国产av一区二区精品久久| 国产精品.久久久| 2022亚洲国产成人精品| 亚洲一级一片aⅴ在线观看| 黄色毛片三级朝国网站 | 汤姆久久久久久久影院中文字幕| 99久久中文字幕三级久久日本| 久久青草综合色| 亚洲精品第二区| 国产日韩欧美在线精品| 亚洲电影在线观看av| 久久久久久久久大av| 日日爽夜夜爽网站| 男人和女人高潮做爰伦理| 免费看av在线观看网站| 人妻 亚洲 视频| 两个人的视频大全免费| 国产精品欧美亚洲77777| 成年人午夜在线观看视频| 亚洲精品一区蜜桃| 午夜福利,免费看| 国产熟女欧美一区二区| 免费观看a级毛片全部| 成人影院久久| 女性被躁到高潮视频| 亚洲精品乱码久久久v下载方式| 欧美老熟妇乱子伦牲交| 肉色欧美久久久久久久蜜桃| 菩萨蛮人人尽说江南好唐韦庄| 日本av手机在线免费观看| 秋霞在线观看毛片| 久久av网站| 男女边摸边吃奶| av天堂久久9| 韩国高清视频一区二区三区| 精品少妇黑人巨大在线播放| .国产精品久久| 久久狼人影院| 久久久久国产网址| 久久久午夜欧美精品| 97在线视频观看| 国产精品一区www在线观看| 青春草视频在线免费观看| 99视频精品全部免费 在线| 最黄视频免费看| 中国国产av一级| 熟女人妻精品中文字幕| 久久精品国产亚洲av天美| 99国产精品免费福利视频| 插阴视频在线观看视频| 国产毛片在线视频| 丰满人妻一区二区三区视频av| 日韩一区二区三区影片| 午夜福利网站1000一区二区三区| 亚洲国产最新在线播放| 国产成人一区二区在线| 久久久久视频综合| 99热这里只有精品一区| 只有这里有精品99| 久久久久网色| 人体艺术视频欧美日本| 免费观看无遮挡的男女| 亚洲,欧美,日韩| 日本vs欧美在线观看视频 | 国产成人精品无人区| 午夜免费鲁丝| 18+在线观看网站| 亚洲av.av天堂| 性色av一级| 中文字幕人妻丝袜制服| 午夜福利视频精品| 一个人看视频在线观看www免费| 亚洲精品乱久久久久久| 99久久人妻综合| 这个男人来自地球电影免费观看 | av黄色大香蕉| 最新中文字幕久久久久| 婷婷色av中文字幕| 午夜日本视频在线| 一本一本综合久久| 成人亚洲欧美一区二区av| 美女xxoo啪啪120秒动态图| 亚洲精品一区蜜桃| 最新中文字幕久久久久| 国产精品一二三区在线看| 亚洲欧美一区二区三区黑人 | 夜夜看夜夜爽夜夜摸| 精品少妇久久久久久888优播| 国产淫语在线视频| 成人国产av品久久久| 乱码一卡2卡4卡精品| 街头女战士在线观看网站| 久久久久网色| 肉色欧美久久久久久久蜜桃| videossex国产| 国产成人一区二区在线| 国产高清国产精品国产三级| 在线观看免费视频网站a站| 日本vs欧美在线观看视频 | 女人精品久久久久毛片| 亚洲美女搞黄在线观看| 成人黄色视频免费在线看| 水蜜桃什么品种好| 亚洲欧美一区二区三区黑人 | 日韩欧美 国产精品| 国产精品久久久久久av不卡| 免费看光身美女| 免费av中文字幕在线| 丁香六月天网| 菩萨蛮人人尽说江南好唐韦庄| 亚洲av综合色区一区| 国产成人精品久久久久久| 亚洲情色 制服丝袜| 精品99又大又爽又粗少妇毛片| 日韩精品免费视频一区二区三区 | 欧美激情国产日韩精品一区| 男人舔奶头视频| 啦啦啦在线观看免费高清www| 国产精品久久久久久精品电影小说| 免费人成在线观看视频色| 美女大奶头黄色视频| 免费久久久久久久精品成人欧美视频 | 一本大道久久a久久精品| 国产高清三级在线| 制服丝袜香蕉在线| 九色成人免费人妻av| 国产片特级美女逼逼视频| 国产伦精品一区二区三区四那| 蜜臀久久99精品久久宅男| 久久精品久久精品一区二区三区| 新久久久久国产一级毛片| 边亲边吃奶的免费视频| 国产精品熟女久久久久浪| 人人妻人人澡人人爽人人夜夜| 偷拍熟女少妇极品色| a级一级毛片免费在线观看| 丰满人妻一区二区三区视频av| 国产精品蜜桃在线观看| av在线观看视频网站免费| 精品人妻熟女av久视频| 久久热精品热| 久久久久精品性色| 边亲边吃奶的免费视频| 久久国内精品自在自线图片| 国产男女超爽视频在线观看| 18禁在线无遮挡免费观看视频| 伦精品一区二区三区| 精品一区在线观看国产| 久久婷婷青草| 国国产精品蜜臀av免费| 少妇被粗大的猛进出69影院 | 大话2 男鬼变身卡| 一本大道久久a久久精品| 女人久久www免费人成看片| 天美传媒精品一区二区| 免费看不卡的av| 久久人人爽人人爽人人片va| 免费人成在线观看视频色| 免费不卡的大黄色大毛片视频在线观看| 国产精品蜜桃在线观看| 欧美bdsm另类| 纯流量卡能插随身wifi吗| 只有这里有精品99| 色视频www国产| 亚洲激情五月婷婷啪啪| 最近2019中文字幕mv第一页| 国产女主播在线喷水免费视频网站| 夜夜骑夜夜射夜夜干| 久久女婷五月综合色啪小说| 精品国产国语对白av| 久久鲁丝午夜福利片| 欧美性感艳星| 亚洲久久久国产精品| 18禁在线播放成人免费| 午夜视频国产福利| 多毛熟女@视频| 精品一品国产午夜福利视频| 欧美精品国产亚洲| 国产欧美日韩精品一区二区| 午夜久久久在线观看| 精品一区二区三卡| 亚洲内射少妇av| 国产成人精品一,二区| 成人国产av品久久久| 亚洲精品一二三| 男女国产视频网站| 蜜桃在线观看..| 欧美97在线视频| 一级毛片 在线播放| 精品亚洲乱码少妇综合久久| 丰满人妻一区二区三区视频av| 新久久久久国产一级毛片| www.色视频.com| 熟妇人妻不卡中文字幕| 国产成人91sexporn| 伊人久久国产一区二区| 爱豆传媒免费全集在线观看| 亚洲三级黄色毛片| 欧美少妇被猛烈插入视频| av专区在线播放| 国产精品三级大全| 亚洲精品一二三| 久久久久人妻精品一区果冻| 在线精品无人区一区二区三| 亚洲色图综合在线观看| 亚洲经典国产精华液单| 能在线免费看毛片的网站| 99精国产麻豆久久婷婷| av不卡在线播放| 亚洲av日韩在线播放| 中文乱码字字幕精品一区二区三区| 久久99一区二区三区| 国内精品宾馆在线| 22中文网久久字幕| 久久人人爽人人片av| 免费人妻精品一区二区三区视频| 免费看av在线观看网站| 26uuu在线亚洲综合色| 纯流量卡能插随身wifi吗| 99热国产这里只有精品6| 国产欧美日韩一区二区三区在线 | 一二三四中文在线观看免费高清| 少妇高潮的动态图| 欧美日韩国产mv在线观看视频| 精品国产一区二区三区久久久樱花| 一区二区三区乱码不卡18| 国产精品久久久久久久电影| 曰老女人黄片| 男人舔奶头视频| a级毛色黄片| 91aial.com中文字幕在线观看| 免费看日本二区| 哪个播放器可以免费观看大片| 亚洲国产成人一精品久久久| 亚洲伊人久久精品综合| 欧美精品高潮呻吟av久久| 国产成人精品婷婷| 国产午夜精品一二区理论片| 中国国产av一级| 99国产精品免费福利视频| 国产av国产精品国产| 成人亚洲精品一区在线观看| 久久国内精品自在自线图片| 日韩一本色道免费dvd| 在线免费观看不下载黄p国产| 免费人妻精品一区二区三区视频| 三上悠亚av全集在线观看 | 两个人免费观看高清视频 | 少妇高潮的动态图| 婷婷色综合www| 国产免费一级a男人的天堂| 国产精品久久久久久精品电影小说| 精品人妻偷拍中文字幕| 国产精品一二三区在线看| 欧美日韩视频精品一区| 亚洲不卡免费看| 国产熟女午夜一区二区三区 | 国产亚洲5aaaaa淫片| 国产欧美另类精品又又久久亚洲欧美| 三级国产精品片| 亚洲第一区二区三区不卡| 日日爽夜夜爽网站| 80岁老熟妇乱子伦牲交| 国产成人免费观看mmmm| 国产视频内射| a级毛片在线看网站| 亚洲精品国产av成人精品| 人妻制服诱惑在线中文字幕| 一级二级三级毛片免费看| 在线天堂最新版资源| av福利片在线观看| 亚州av有码| 人妻系列 视频| 国产精品人妻久久久久久| 国产熟女午夜一区二区三区 | 下体分泌物呈黄色| 国产成人一区二区在线| av一本久久久久| 精品久久久噜噜| 欧美bdsm另类| 熟女人妻精品中文字幕| 欧美三级亚洲精品| 亚洲精品国产av成人精品| www.av在线官网国产| 青青草视频在线视频观看| 欧美老熟妇乱子伦牲交| 久久人人爽人人爽人人片va| 少妇熟女欧美另类| 亚洲在久久综合| 亚洲色图综合在线观看| 在线播放无遮挡| 夫妻午夜视频| 国产av一区二区精品久久| 久久久久久人妻| 美女大奶头黄色视频| 国产 精品1| 边亲边吃奶的免费视频| 中文字幕精品免费在线观看视频 | 色视频在线一区二区三区| 国产成人一区二区在线| 亚洲国产精品一区三区| kizo精华| 亚洲欧洲精品一区二区精品久久久 | 亚洲精品视频女| 嫩草影院入口| 国产黄片美女视频| 日本av手机在线免费观看| 又黄又爽又刺激的免费视频.| 亚州av有码| 大又大粗又爽又黄少妇毛片口| 日韩制服骚丝袜av| 国产精品久久久久久久久免| 蜜臀久久99精品久久宅男| 免费黄色在线免费观看| 一区二区三区精品91| 免费在线观看成人毛片| 国产有黄有色有爽视频| 久久6这里有精品| 午夜免费男女啪啪视频观看| 激情五月婷婷亚洲| 尾随美女入室| 天美传媒精品一区二区| 免费看光身美女| 热re99久久国产66热| 三级经典国产精品| 国产成人免费无遮挡视频| 黄色配什么色好看| 少妇猛男粗大的猛烈进出视频| 最近中文字幕2019免费版| 中文字幕精品免费在线观看视频 | av在线app专区| 亚洲欧美成人综合另类久久久| 99久久人妻综合| 黑人高潮一二区| 老女人水多毛片| 色吧在线观看| 精品一品国产午夜福利视频| 久久ye,这里只有精品| 国产毛片在线视频| 视频中文字幕在线观看| 高清视频免费观看一区二区| 久久午夜综合久久蜜桃| 亚洲在久久综合| 中文字幕av电影在线播放| 黄色一级大片看看| 久久精品久久精品一区二区三区| 国产欧美亚洲国产| 国产日韩一区二区三区精品不卡 | 免费看av在线观看网站| 一级毛片 在线播放| 欧美高清成人免费视频www| 精品少妇内射三级| 精品人妻偷拍中文字幕| 高清毛片免费看| 欧美国产精品一级二级三级 | 麻豆成人午夜福利视频| 久久精品国产自在天天线| 男人添女人高潮全过程视频| 国产高清有码在线观看视频| 人妻夜夜爽99麻豆av| 如何舔出高潮| 又粗又硬又长又爽又黄的视频| 99国产精品免费福利视频| 国产亚洲精品久久久com| 中文欧美无线码| tube8黄色片| 一级毛片久久久久久久久女| 精品熟女少妇av免费看| 亚洲精品456在线播放app| 一本色道久久久久久精品综合| 国产伦理片在线播放av一区| 我要看黄色一级片免费的| 国产精品偷伦视频观看了| 日本91视频免费播放| 久久久久人妻精品一区果冻| 美女脱内裤让男人舔精品视频| 麻豆乱淫一区二区| 美女国产视频在线观看| 精品亚洲成国产av| 777米奇影视久久| 国产伦精品一区二区三区四那| 成人国产av品久久久| 蜜桃在线观看..| 人人妻人人添人人爽欧美一区卜| www.av在线官网国产| 最近手机中文字幕大全| 国产女主播在线喷水免费视频网站| 韩国av在线不卡| 日韩人妻高清精品专区| 99久国产av精品国产电影| 亚洲av日韩在线播放| 青春草国产在线视频| 久久久久久伊人网av| 国产毛片在线视频| 五月天丁香电影| 国产欧美日韩综合在线一区二区 | 一本色道久久久久久精品综合| 欧美+日韩+精品| 中文字幕精品免费在线观看视频 | 国产黄色免费在线视频| 中文字幕人妻熟人妻熟丝袜美| 免费大片18禁| 成人毛片60女人毛片免费| 女的被弄到高潮叫床怎么办| 一边亲一边摸免费视频| 女人久久www免费人成看片| 少妇 在线观看| 十分钟在线观看高清视频www | 一级毛片电影观看| 99视频精品全部免费 在线| 免费看av在线观看网站| 国产国拍精品亚洲av在线观看| 女性生殖器流出的白浆| 日韩一区二区三区影片| 黑人高潮一二区| 岛国毛片在线播放| 亚洲欧美日韩另类电影网站| 日日撸夜夜添| 人人妻人人爽人人添夜夜欢视频 | 欧美激情国产日韩精品一区| 国产精品熟女久久久久浪| 26uuu在线亚洲综合色| 国产又色又爽无遮挡免| 国产亚洲精品久久久com| 日本午夜av视频| av视频免费观看在线观看| 一级毛片我不卡| 国产极品天堂在线| 免费少妇av软件| 在线观看免费高清a一片| 最新的欧美精品一区二区| 国产成人精品一,二区| 少妇猛男粗大的猛烈进出视频| 汤姆久久久久久久影院中文字幕| 亚洲av成人精品一区久久| 校园人妻丝袜中文字幕| 日韩一本色道免费dvd| 新久久久久国产一级毛片| 日本爱情动作片www.在线观看| a级毛片在线看网站| 免费黄频网站在线观看国产| av国产精品久久久久影院| 久久免费观看电影| 少妇精品久久久久久久| 最近中文字幕高清免费大全6| 亚洲激情五月婷婷啪啪| 欧美精品高潮呻吟av久久| 久久韩国三级中文字幕| 国产精品偷伦视频观看了| 精品一品国产午夜福利视频| 一区二区三区乱码不卡18|