ANOVEL DEEP ANALYSISON TEXT OPINION WHEN HIDDEN SENTIMENTS
Keywords:
semanticAbstract
Aiming to detect semantic features and sentiments at the aspect level, as well as forecast overall
sentiments from review data, is the emphasis of this study. An all-in-one solution to the challenges is
presented in the form of a probabilistic supervised joint aspect and sentiment model (SJASM). SJASM
uses opinion pairs to describe each review document and can concurrently model the review's hidden
aspects and related opinion words for hidden aspect identification and sentiment analysis. Using
emotional overall evaluations, which are common in online reviews, it can infer semantic features and
aspect-level feelings, which are both useful and predictive of overall sentiments in reviews. In addition,
we're Develop an effective inference technique for SJASM parameters based on Gibbs sampling. The
experimental findings show that the proposed model outperforms seven well-established baseline
approaches for sentiment analysis tasks, which we tested extensively using real-world review data.
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