SOTAVerified

Sentiment Analysis

Sentiment Analysis is the task of classifying the polarity of a given text. For instance, a text-based tweet can be categorized into either "positive", "negative", or "neutral". Given the text and accompanying labels, a model can be trained to predict the correct sentiment.

Sentiment Analysis techniques can be categorized into machine learning approaches, lexicon-based approaches, and even hybrid methods. Some subcategories of research in sentiment analysis include: multimodal sentiment analysis, aspect-based sentiment analysis, fine-grained opinion analysis, language specific sentiment analysis.

More recently, deep learning techniques, such as RoBERTa and T5, are used to train high-performing sentiment classifiers that are evaluated using metrics like F1, recall, and precision. To evaluate sentiment analysis systems, benchmark datasets like SST, GLUE, and IMDB movie reviews are used.

Further readings:

Papers

Showing 39013950 of 5630 papers

TitleStatusHype
Public Apologies in India - Semantics, Sentiment and Emotion0
Multiple Source Domain Adaptation with Adversarial Learning0
Bootstrap Domain-Specific Sentiment Classifiers from Unlabeled Corpora0
Adversarial Examples for Natural Language Classification Problems0
Learning Representations Specialized in Spatial Knowledge: Leveraging Language and VisionCode0
Fast and Accurate Text Classification: Skimming, Rereading and Early Stopping0
Building a Sentiment Corpus of Tweets in Brazilian PortugueseCode0
Comparative Opinion Mining: A Review0
Any-gram Kernels for Sentence Classification: A Sentiment Analysis Case Study0
Towards a science of human stories: using sentiment analysis and emotional arcs to understand the building blocks of complex social systems0
Learning when to skim and when to read0
Sentiment Predictability for StocksCode0
A Novel Way of Identifying Cyber Predators0
Aspect Extraction and Sentiment Classification of Mobile Apps using App-Store Reviews0
Audio-Visual Sentiment Analysis for Learning Emotional Arcs in MoviesCode0
Capturing Reliable Fine-Grained Sentiment Associations by Crowdsourcing and Best-Worst Scaling0
Sentiment Classification using Images and Label Embeddings0
CIAL at IJCNLP-2017 Task 2: An Ensemble Valence-Arousal Analysis System for Chinese Words and Phrases0
NLPSA at IJCNLP-2017 Task 2: Imagine Scenario: Leveraging Supportive Images for Dimensional Sentiment Analysis0
ADAPT at IJCNLP-2017 Task 4: A Multinomial Naive Bayes Classification Approach for Customer Feedback Analysis task0
SentiNLP at IJCNLP-2017 Task 4: Customer Feedback Analysis Using a Bi-LSTM-CNN Model0
Bingo at IJCNLP-2017 Task 4: Augmenting Data using Machine Translation for Cross-linguistic Customer Feedback Classification0
MainiwayAI at IJCNLP-2017 Task 2: Ensembles of Deep Architectures for Valence-Arousal Prediction0
LDCCNLP at IJCNLP-2017 Task 2: Dimensional Sentiment Analysis for Chinese Phrases Using Machine Learning0
CKIP at IJCNLP-2017 Task 2: Neural Valence-Arousal Prediction for Phrases0
NCYU at IJCNLP-2017 Task 2: Dimensional Sentiment Analysis for Chinese Phrases using Vector Representations0
NCTU-NTUT at IJCNLP-2017 Task 2: Deep Phrase Embedding using bi-LSTMs for Valence-Arousal Ratings Prediction of Chinese Phrases0
Leveraging Linguistic Resources for Improving Neural Text Classification0
IITP at IJCNLP-2017 Task 4: Auto Analysis of Customer Feedback using CNN and GRU Network0
Linguistic approach based Transfer Learning for Sentiment Classification in Hindi0
The Sentimental Value of Chinese Sub-Character Components0
THU\_NGN at IJCNLP-2017 Task 2: Dimensional Sentiment Analysis for Chinese Phrases with Deep LSTM0
IJCNLP-2017 Task 2: Dimensional Sentiment Analysis for Chinese Phrases0
GPU Kernels for Block-Sparse WeightsCode0
Alibaba at IJCNLP-2017 Task 2: A Boosted Deep System for Dimensional Sentiment Analysis of Chinese Phrases0
YNU-HPCC at IJCNLP-2017 Task 4: Attention-based Bi-directional GRU Model for Customer Feedback Analysis Task of English0
Sentiment Analysis: An Empirical Comparative Study of Various Machine Learning Approaches0
NTOUA at IJCNLP-2017 Task 2: Predicting Sentiment Scores of Chinese Words and Phrases0
Multiple Instance Learning Networks for Fine-Grained Sentiment AnalysisCode0
Improving the Accuracy of Pre-trained Word Embeddings for Sentiment AnalysisCode0
Visual and Textual Sentiment Analysis Using Deep Fusion Convolutional Neural Networks0
10Sent: A Stable Sentiment Analysis Method Based on the Combination of Off-The-Shelf Approaches0
Non-Contextual Modeling of Sarcasm using a Neural Network Benchmark0
Robust Unsupervised Domain Adaptation for Neural Networks via Moment AlignmentCode0
A Sequential Neural Encoder with Latent Structured Description for Modeling Sentences0
Sentiment analysis of twitter data0
Multiple-Source Adaptation for Regression Problems0
Improved Twitter Sentiment Analysis Using Naive Bayes and Custom Language Model0
Bayesian Paragraph Vectors0
Joint Sentiment/Topic Modeling on Text Data Using Boosted Restricted Boltzmann Machine0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1Word+ES (Scratch)Attack Success Rate100Unverified
2MT-DNN-SMARTAccuracy97.5Unverified
3T5-11BAccuracy97.5Unverified
4MUPPET Roberta LargeAccuracy97.4Unverified
5T5-3BAccuracy97.4Unverified
6ALBERTAccuracy97.1Unverified
7StructBERTRoBERTa ensembleAccuracy97.1Unverified
8XLNet (single model)Accuracy97Unverified
9SMARTRoBERTaDev Accuracy96.9Unverified
10ELECTRAAccuracy96.9Unverified
#ModelMetricClaimedVerifiedStatus
1RoBERTa-large with LlamBERTAccuracy96.68Unverified
2RoBERTa-largeAccuracy96.54Unverified
3XLNetAccuracy96.21Unverified
4Heinsen Routing + RoBERTa LargeAccuracy96.2Unverified
5RoBERTa-large 355M + Entailment as Few-shot LearnerAccuracy96.1Unverified
6GraphStarAccuracy96Unverified
7DV-ngrams-cosine with NB sub-sampling + RoBERTa.baseAccuracy95.94Unverified
8DV-ngrams-cosine + RoBERTa.baseAccuracy95.92Unverified
9Roberta_Large ST + Cosine Similarity LossAccuracy95.9Unverified
10BERT large finetune UDAAccuracy95.8Unverified
#ModelMetricClaimedVerifiedStatus
1Llama-3.3-70B + CAPOAccuracy62.27Unverified
2Mistral-Small-24B + CAPOAccuracy 60.2Unverified
3Heinsen Routing + RoBERTa LargeAccuracy59.8Unverified
4RoBERTa-large+Self-ExplainingAccuracy59.1Unverified
5Qwen2.5-32B + CAPOAccuracy 59.07Unverified
6Heinsen Routing + GPT-2Accuracy58.5Unverified
7BCN+Suffix BiLSTM-Tied+CoVeAccuracy56.2Unverified
8BERT LargeAccuracy55.5Unverified
9LM-CPPF RoBERTa-baseAccuracy54.9Unverified
10BCN+ELMoAccuracy54.7Unverified
#ModelMetricClaimedVerifiedStatus
1Char-level CNNError4.88Unverified
2SVDCNNError4.74Unverified
3LEAMError4.69Unverified
4fastText, h=10, bigramError4.3Unverified
5SWEM-hierError4.19Unverified
6SRNNError3.96Unverified
7M-ACNNError3.89Unverified
8DNC+CUWError3.6Unverified
9CCCapsNetError3.52Unverified
10Block-sparse LSTMError3.27Unverified
#ModelMetricClaimedVerifiedStatus
1Millions of EmojiTraining Time1,500Unverified
2VLAWEAccuracy93.3Unverified
3RoBERTa-large 355M + Entailment as Few-shot LearnerAccuracy92.5Unverified
4AnglE-LLaMA-7BAccuracy91.09Unverified
5byte mLSTM7Accuracy86.8Unverified
6MEANAccuracy84.5Unverified
7RNN-CapsuleAccuracy83.8Unverified
8Capsule-BAccuracy82.3Unverified
9SuBiLSTM-TiedAccuracy81.6Unverified
10USE_T+CNNAccuracy81.59Unverified