Opinion Mining of Large Scale Data using the concept of Fuzzy Logic
Author(s):
Abhijeet Raj, Ankush Bansal, Kanha Shukla
Keywords:
Social media analytics, Data Mining, Big Data
Abstract
Recently, some efforts have been made to mine social media for the analysis of public sentiment. By means of a literature review on early works related to social media analytics especially on opinion mining, it was recognized that in the real life social media environment, the structure of the data is commonly not clear and it does not directly generate enough information to fully represent any selected target. However, most of these works were unable to accurately extract clear indications of general public opinion from the ambiguous social media data. They also lacked the capacity to summarize multicharacteristics from the scattered mass of social data and use it to compile useful models, also lacked any efficient mechanism for managing the big data. Motivated by these research problems, this paper proposes a novel matrix-based fuzzy algorithm, called the FMM system, to mine the defined multilayered Twitter data. Through sets of comparable experiments applied on Twitter data, the proposed FMM system achieved an excellent performance, with both fast processing speeds and high predictive accuracy.
Article Details
Unique Paper ID: 144507
Publication Volume & Issue: Volume 3, Issue 12
Page(s): 53 - 57
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