Building Dynamic Lexicons for Sentiment Analysis
Building Dynamic Lexicons for Sentiment Analysis
Blog Article
Nowadays, many approaches for SWEETS Sentiment Analysis (SA) rely on affective lexicons to identify emotions transmitted in opinions.However, most of these lexicons do not consider that a word can express different sentiments in different predication domains, introducing errors in the sentiment inference.Due to this problem, we present a model based on a context-graph which can be used for building domain specic sentiment lexicons (DL: Dynamic Lexicons) by propagating the valence of a few seed words.For different corpora, we compare AEG BPE642020M Mastery A+ Rated Built In Electric Single Oven wh the results of a simple rule-based sentiment classier using the corresponding DL, with the results obtained using a general affective lexicon.For most corpora containing specic domain opinions, the DL reaches better results than the general lexicon.