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About this Dataset
This dataset is designed for sentiment analysis tasks, specifically to classify text comments as positive or negative. It's a supervised dataset, meaning each comment is already labeled with its corresponding sentiment.
Key Features:
Two Columns: - Text: Contains the raw text of the comments. - Tag: Indicates the sentiment of the comment, labeled as either "positive" or "negative."
Supervised Learning: Ideal for training and evaluating machine learning models for sentiment classification.
Potential Applications: - Sentiment Analysis: Build models to automatically analyze emotions and opinions in various text data. - Social Media Analysis: Understand public sentiment towards brands, products, or topics on social media platforms. - Customer Feedback Analysis: Gauge customer satisfaction and identify areas for improvement based on reviews and feedback. - Text Classification: Develop text categorization systems for diverse applications.
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The Bangla Sentiment Dataset is a curated collection of sentiment-rich textual data in Bangla, focused on recent and trending topics. This dataset has been compiled from diverse sources, including Bangladeshi online newspapers, social media platforms, and blogs, ensuring a wide spectrum of language styles and sentiment expressions.
Key Features: Focus on Recent Topics: The dataset emphasizes contemporary issues, trending discussions, and popular topics in Bangladeshi society. This includes sentiments on political developments, social movements, entertainment, cultural events, and other recent happenings.
Source Variety:
Online Newspapers: Articles, editorials, headlines, and reader comments provide structured and semi-formal sentiment data. Social Media: Posts, tweets, and comments reflect informal, conversational language with high emotional expressiveness. Blogs: Opinion pieces and discussions offer detailed and context-rich sentiment content. Sentiment Labels: Each entry in the dataset is annotated with one of the following sentiment categories:
Positive (1): Texts expressing happiness, agreement, or optimism. Negative (0): Texts reflecting criticism, disagreement, or pessimism. Neutral (2): Texts presenting balanced or factual statements with minimal emotional bias. Linguistic and Stylistic Diversity: The dataset captures a range of Bangla language variations, including:
Formal and informal Bangla usage. Regional dialects. Transliterated Bangla (Banglish) commonly used on social media. Real-World Context: The inclusion of recent topics ensures that the dataset is relevant for analyzing public sentiment around current events and trends. This makes it particularly useful for real-time sentiment analysis applications.
This dataset provides an invaluable resource for researchers and practitioners aiming to explore sentiment analysis in Bangla, with a special emphasis on modern-day relevance and real-world applicability.
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This is a large-scale Bangla dataset based on positive, negative, and and neutral comments. It has four features: platform, where we get the comments; sources; comment; sentiment; and label.
There are four columns which are Platform, Comment, Sentiment, and Label. I have collected Bangla comments from Twitter, Youtube, and Google. Comment is about positive, negative, and neutral. Sentiment is about making toxic, neutral, sad, funny, and happy comments that are labeled by 0, 1, 2, 3, and 4.
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TwitterThis is a dataset for Bengali sentiment analysis which a merged dataset from the publicly available sentiment dataset. The sources I used to make a merged bangla sentiment dataset are: 1) https://www.kaggle.com/datasets/cryptexcode/sentnob-sentiment-analysis-in-noisy-bangla-texts 2) https://github.com/atik-05/Bangla_ABSA_Datasets/tree/master 3) https://data.mendeley.com/datasets/n53xt69gnf/3 4) https://github.com/shakkhor/Academic-Thesis/blob/master/450/comments.csv 5) https://github.com/mohsinulkabir14/BanglaBook/tree/main/data/csv After that, i applied some cleaning and preprocessing on this merge dataset. In the dataset, there are 2 columns. One is "Data" and another is "Label". There are 3 labels for sentiment labeling. 1) Neutral : 0 2) Positive : 1 3) Negative: 2
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Bengali Sentiment Analysis Dataset
Dataset Description
This dataset contains 44,236 Bengali sentences with corresponding sentiment labels, synthetically generated using ChatGPT for natural language processing and machine learning research.
Dataset Summary
Language: Bengali (বাংলা) Total Entries: 44,236 synthetic sentences Task: Sentiment Classification Format: JSON Generation Method: OpenAI ChatGPT (GPT-4) License: CC0 1.0 Universal (Public Domain)… See the full description on the dataset page: https://huggingface.co/datasets/shaikh25/synthetic-bengali-sentiment.
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• Bangla, a language spoken by more than 230 million people worldwide, is significantly underrepresented in speech and sentiment analysis research when compared to high-resource languages. • This is addressed with the dataset. Researchers and developers working on low-resource language technologies, such as sentiment analysis, speech recognition, and multimodal learning frameworks, should find this extensive resource very helpful. • Sentiment-aware speech recognition, speech-based emotion detection, emotionally expressive text-to-speech systems, multimodal sentiment classification, and speaker-independent recognition models are just a few of the many applications that can be developed and evaluated using this dataset. • Its modular structure promotes continuous research expansion by enabling contributors to add new regional vocabularies, dialectal variations, or additional sentiment classes over time. • The dataset is precisely balanced, with 4,000 audio recordings created by four native speakers (two male and two female) and 500 samples for each sentiment category. The sentences capture the natural and everyday use of the Bangla language, spanning a wide range of topics that include events, emotions, personal experiences, and general statements.
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ROOTS Subset: roots_indic-bn_bangla_sentiment_classification_datasets
Bangla Sentiment Classification Datasets
Dataset uid: bangla_sentiment_classification_datasets
Description
Multiple sentiment classification datasets for Bengali, which can also be used for training LMs. The Datasets are the following: ABSA_datasets -- This dataset has developed to perform aspect based sentiment analysis task in Bangla. License: CC BY 4.0 SAIL_data -- This dataset, consists of tweet… See the full description on the dataset page: https://huggingface.co/datasets/bigscience-data/roots_indic-bn_bangla_sentiment_classification_datasets.
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Bengali-English Code-Mixed Sentiment Dataset
Dataset Summary
This dataset contains Bengali–English code-mixed social media text annotated for sentiment classification.The primary goal is to support research and applications in code-mixed NLP, especially sentiment analysis in low-resource Indic languages. The dataset combines and cleans multiple publicly available sources:
BnSentMix: Bengali–English code-mixed sentiment dataset
SentMix-3L: Multi-lingual code-mixed… See the full description on the dataset page: https://huggingface.co/datasets/Swarnadeep-28/bn_code_mix_sentiment_dataset.
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Bangla ( Bengali ) sentiment analysis dataset
The repository contains 3307 Negative reviews and 8500 Positive reviews collected and manually annotated from Youtube Bengali drama.
If you use this dataset, please cite the following paper-
@inproceedings{sazzed2020cross, title={Cross-lingual sentiment classification in low-resource Bengali language}, author={Sazzed, Salim}, booktitle={Proceedings of the Sixth Workshop on Noisy User-generated Text (W-NUT 2020)}, pages={50--60}, year={2020} }
If you have any questions, please email me- salimsazzad222@gmail.com.
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Bengali-English Code-Mixed Sentiment Dataset
Dataset Summary
This dataset contains Bengali–English code-mixed social media text annotated for sentiment classification.The primary goal is to support research and applications in code-mixed NLP, especially sentiment analysis in low-resource Indic languages. The dataset combines and cleans multiple publicly available sources:
BnSentMix: Bengali–English code-mixed sentiment dataset
SentMix-3L: Multi-lingual code-mixed… See the full description on the dataset page: https://huggingface.co/datasets/asfaqur/bn_code_mix_sentiment_dataset.
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The Bangla Product Comments Dataset is a comprehensive collection of product reviews gathered from diverse ecommerce platforms in Bangladesh. This dataset offers a rich source of information reflecting customer opinions and sentiments towards various products available online. This dataset holds significant value for businesses, researchers, and data scientists interested in understanding consumer behavior, product perception, and sentiment analysis within the Bangladeshi ecommerce landscape. By leveraging this dataset, stakeholders can derive actionable insights to enhance product quality, marketing strategies, and overall customer satisfaction.
Columns:
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In the Bangla language, sentiment analysis is becoming more and more significant. Aspect-based sentiment analysis (ABSA) predicts the sentiment polarity on an aspect level. The data were collected from numerous individuals with a minimum of two aspects. Every comment is a complex or compound sentence. The datasets are organized in a folder named "BANGLA_ABSA dataset" which has four Excel files, one for each of the datasets: Car_ABSA, Mobile_phone_ABSA, Movie_ABSA, and Restaurant_ABSA. Each Excel file contains three columns namely Id, Comment, and {Aspect category, Sentiment Polarity}. Car_ABSA, Mobile_phone_ABSA, Movie_ABSA, and Restaurant_ABSA datasets have 1149, 975, 800, and 801 rows of data respectively.
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This dataset comprises 3,290 Bengali political comments sourced from social media platforms, news comment sections, and online political discussions, specifically curated for sentiment analysis research in Bengali NLP. The corpus provides a comprehensive resource for training and evaluating sentiment classification models within the political domain. The dataset features 3,290 instances distributed across five sentiment classes with excellent balance (variance <8%): Very Negative (675, 20.5%), Negative (663, 20.2%), Neutral (626, 19.0%), Very Positive (664, 20.2%), and Positive (662, 20.1%). Stored in Excel format with two columns containing Bengali political comments (Unicode text) and corresponding sentiment labels, the dataset maintains high quality with no missing values and verified annotations. Comment lengths average 83 characters, ranging from 11 to 398 characters. The collection encompasses diverse political discourse including government policies and governance, electoral processes and democracy, political parties and leadership dynamics, social and economic issues, current affairs and political events, along with public opinion and citizen responses to political developments. This dataset serves multiple research purposes, including Bengali sentiment analysis model development and benchmarking, political discourse analysis and opinion mining, natural language processing research for low-resource languages, cross-lingual sentiment analysis studies, social media analytics for Bengali content, multi-class text classification research, and comparative political sentiment studies across different linguistic and cultural contexts.
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TwitterThis is a data set of Sentiment Analysis On Bangla News Comments where every data was annotated by three different individuals to get three different perspectives and based on the majorities decisions the final tag was chosen. This data set contains 13802 data in total.
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Bangla ( Bengali ) sentiment analysis dataset
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This dataset, titled Multilabeled Sentiment and Emotion Classification Dataset, is developed to advance natural language processing (NLP) research in the Bengali language, particularly in the domains of sentiment analysis and emotion detection. It contains 40,811 entries of user-generated text from Bengali social media and comment sections, each annotated with two labels: one for sentiment and another for emotion.
Sentiment Categories: The dataset is annotated with five sentiment classes:
Very Negative – 8,979 entries (21.9%)
Negative – 10,757 entries (26.3%)
Neutral – 8,662 entries (21.2%)
Positive – 7,186 entries (17.8%)
Very Positive – 5,227 entries (12.8%)
This distribution highlights a larger presence of negative and neutral sentiments, indicating a critical tone in the source data.
Emotion Categories: There are seven emotion classes in the dataset:
Happy – 8,154 entries (19.9%)
Surprised – 3,470 entries (8.5%)
Sexual – 7,250 entries (17.7%)
Religious – 2,449 entries (6.0%)
Calm – 7,583 entries (18.5%)
Hateful – 4,919 entries (12.0%)
Fearful – 7,086 entries (17.3%)
This emotion distribution reveals that Happy, Calm, and Sexual emotions are among the most prevalent, while Religious and Surprised emotions are relatively less represented.
Applications: This dataset is suitable for training and evaluating machine learning and deep learning models for tasks such as:
Multilabel text classification
Emotion recognition
Sentiment analysis
Hate speech and toxic comment detection in the Bengali language
Language: Bengali (Bangla)
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TwitterThis dataset contains around 1300 positive and negative Bengal ( Bangla ) sentiment words. This lexicon was created from a Bengali review corpus.
If you use this lexicon please cite following paper-
@inproceedings{sazzed2020development, title={Development of Sentiment Lexicon in Bengali utilizing Corpus and Cross-lingual Resources}, author={Sazzed, Salim}, booktitle={2020 IEEE 21st International Conference on Information Reuse and Integration for Data Science (IRI)}, pages={237--244}, year={2020}, organization={IEEE Computer Society} }
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TwitterThis dataset was created by Nuhash Afnan
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MONOBHAV is a Bengali dataset for fine-grained sentiment analysis. It contains 10,000 Bengali texts collected from social media platforms and newspaper websites. Each text is manually annotated by native Bengali speakers into five sentiment classes - Strongly Negative, Negative, Neutral, Positive, and Strongly Positive. This dataset enhances the resources available for Bengali sentiment analysis and supports the development and evaluation of more accurate sentiment models for the language.
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BanglaMUSE is a multimodal Bangla sentiment dataset containing aligned text–audio pairs designed for research in sentiment analysis, speech processing, and multimodal learning for low-resource languages.
The dataset includes 1,000 Bangla sentences, evenly balanced between positive (500) and negative (500) sentiment classes. The sentences represent natural, everyday Bangla language usage and were manually curated and validated to ensure clear sentiment polarity.
Each sentence is recorded by four native Bangla speakers (two female and two male), resulting in 4,000 speech recordings in total. All speakers recorded the same set of sentences, enabling controlled analysis of speaker variability while preserving identical textual content. Audio samples are provided in MP3 format, recorded in controlled indoor environments, and manually verified for quality and alignment.
The dataset is distributed with a unified metadata.csv file that links sentence identifiers, sentiment labels, speaker information, and relative audio paths. BanglaMUSE supports tasks such as multimodal sentiment classification, sentiment-aware speech recognition, audio–text alignment, and speaker-independent modeling.
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About this Dataset
This dataset is designed for sentiment analysis tasks, specifically to classify text comments as positive or negative. It's a supervised dataset, meaning each comment is already labeled with its corresponding sentiment.
Key Features:
Two Columns: - Text: Contains the raw text of the comments. - Tag: Indicates the sentiment of the comment, labeled as either "positive" or "negative."
Supervised Learning: Ideal for training and evaluating machine learning models for sentiment classification.
Potential Applications: - Sentiment Analysis: Build models to automatically analyze emotions and opinions in various text data. - Social Media Analysis: Understand public sentiment towards brands, products, or topics on social media platforms. - Customer Feedback Analysis: Gauge customer satisfaction and identify areas for improvement based on reviews and feedback. - Text Classification: Develop text categorization systems for diverse applications.