Rangachari Anand, Kishan Mehrotra, et al.
IEEE Transactions on Neural Networks
Sentiment composition is a fundamental sentiment analysis problem. Previous work relied on manual rules and manually-created lexical resources such as negator lists, or learned a composition function from sentiment-annotated phrases or sentences. We propose a new approach for learning sentiment composition from a large, unlabeled corpus, which only requires a word-level sentiment lexicon for supervision. We automatically generate large sentiment lexicons of bigrams and unigrams, from which we induce a set of lexicons for a variety of sentiment composition processes. The effectiveness of our approach is confirmed through manual annotation, as well as sentiment classification experiments with both phrase-level and sentence-level benchmarks.
Rangachari Anand, Kishan Mehrotra, et al.
IEEE Transactions on Neural Networks
Yanpeng Li
COLING 2018
Dzung Phan, Vinicius Lima
INFORMS 2023
Jehanzeb Mirza, Leonid Karlinsky, et al.
NeurIPS 2023