Sentiment Analysis
Sentiment analysis is a task in the field of natural language processing aimed at classifying the emotional tone of given texts, typically categorizing them as positive, negative, or neutral. This task can be achieved through machine learning, dictionary-based methods, and hybrid approaches. In recent years, deep learning technologies such as RoBERTa and T5 have been widely used to train high-performance sentiment classifiers, with evaluation metrics including F1 score, recall, and precision. Sentiment analysis is not only used for social media monitoring but also widely applied in areas like product review analysis and market trend prediction, demonstrating significant application value.
SST-2 Binary classification
T5-11B
IMDb
XLNet
SST-5 Fine-grained classification
Heinsen Routing + RoBERTa Large
Yelp Binary classification
BERT large
MR
VLAWE
Yelp Fine-grained classification
XLNet
BanglaBook
Bangla-BERT (large)
DynaSent
SVM
SST-3
Sentiment Merged
GPT-4o Fine-Tuned (Minimal)
User and product information
MA-BERT
Amazon Review Full
BERT large
Amazon Review Polarity
BERT large
CR
AnglE-LLaMA-7B
SemEval 2014 Task 4 Subtask 1+2
SLUE
TweetEval
BERTweet
Multi-Domain Sentiment Dataset
UDALM: Unsupervised Domain Adaptation through Language Modeling
DBRD
RobBERT
FiQA
IITP Product Reviews Sentiment
CalBERT
MPQA
IITP Movie Reviews Sentiment
RuSentiment
RuBERT-RuSentiment
SemEval 2017 Task 4-A
DataStories
Twitter
AEN-BERT
Financial PhraseBank
FinBERT
IMDb Movie Reviews
Space-XLNet
SemEval
lstm+bert
1B Words
AJGT
AraBERTv1
ArSAS
ASTD
ChnSentiCorp
ChnSentiCorp Dev
HARD
LABR (2-class, unbalanced)
Latvian Twitter Eater Sentiment Dataset
Naive Bayes
SAIL 2017
Sogou News
fastText, h=10, bigram
Urdu Online Reviews
RCNN