基于鲁棒优化的大数据情感分析极限学习机

P. Menakadevi, J. Ramkumar
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引用次数: 16

摘要

越来越多地使用社交媒体增加了消费者在购买前阅读产品评价和评级的兴趣。现在有一种机制可以分别检查自然语言处理、情感分析和领域适应。在一组数据集上训练的分类器在应用于另一组数据集时可能表现不佳。因此,在试验新的分类器时保持开放的心态是至关重要的。目前正在对大数据中的数据集进行审查。当应用于大数据集时,为单机或小数据集设计的情感分析算法将不能很好地执行。基于鲁棒优化的极限学习机(ROELM)是本文提出的一种用于海量数据情感分析的分类器。ROELM使用自然的狼式行为来分析一个庞大的评论数据库。ELM的单层隐藏层提高了一个因素的分类性能。对该分类器的准确性和f-measure性能进行了评估。结果表明,本文提出的分类器比现有的分类器具有更高的分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Optimization Based Extreme Learning Machine for Sentiment Analysis in Big Data
Increasing use of social media has increased consumer interest in reading product evaluations and ratings before making a purchase. There is now a mechanism to examine natural language processing, sentiment analysis, and domain adaptation separately. A classifier trained on one set of datasets may underperform when applied to another collection of data. Therefore, it's critical to retain an open mind while experimenting with new classifiers. Reviewing datasets in big data is currently taking place. When applied to large datasets, the sentiment analysis algorithm designed for single machines or small datasets will not perform well. Robust Optimization-based Extreme Learning Machine (ROELM) is a classifier proposed in this work for sentiment analysis in massive data. ROELM is using natural wolf-like behavior to analyze an enormous review database. The single-layer hidden layer of ELM improves classification performance by one factor. This classifier's accuracy and f-measure performance have been assessed. According to the results, the suggested classifier achieves a higher level of classification accuracy than current classifiers.
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