2021
DOI: 10.14704/web/v18i1/web18097
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Understanding Consumer Product Sentiments through Supervised Models on Cloud: Pre and Post COVID

Abstract: While a lot of work is done on extracting sentiments and opinions in unstructured text, majority of it is focused on contextual sentiment mining and features that are more focused on sentiments. The team attempted to use contextual text analytics to identify product or service features that drives the sentiment of the user. This is done through application of cosine similarity and neural networks. Customers speak about product or service feature when it is important for the them. The second stage of the analys… Show more

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Cited by 17 publications
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