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A Fuzzy Logic Approach for Opinion Mining on Large Scale Twitter Data

机译:大规模Twitter数据中意见挖掘的模糊逻辑方法

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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 multi-characteristics 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 multi-layered 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.
机译:最近,已经做出了一些努力来挖掘社交媒体以分析公众情绪。通过对与社交媒体分析有关的早期作品,特别是与意见挖掘相关的早期文献进行文献综述,人们认识到,在现实生活中的社交媒体环境中,数据的结构通常并不清晰,并且无法直接生成足够的信息以完全代表任何选定的目标。但是,这些作品大多数都无法从模棱两可的社交媒体数据中准确地提取出清晰的公众舆论指示。他们还缺乏从分散的社会数据中总结出多种特征并使用其来编译有用模型的能力,也缺乏管理大数据的任何有效机制。基于这些研究问题,本文提出了一种新颖的基于矩阵的模糊算法,称为FMM系统,以挖掘定义的多层Twitter数据。通过对Twitter数据进行一系列可比较的实验,所提出的FMM系统具有出色的性能,具有快速的处理速度和较高的预测精度。

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