一种基于人工蜂群和鸽子启发的推特情绪分析混合特征选择算法

S. Kasthuri, A. N. Jebaseeli
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引用次数: 5

摘要

Twitter情绪研究是一项艰巨的任务,包括各种预处理阶段,包括降维。维度的降低确保了最低的计算复杂度,并提高了分类过程中的性能。在推特数据中,每条推特的功能值可能反映也可能不反映个人的反应。因此,当推文被表示为特征矩阵时,会创建许多稀疏的数据点,推特上的情绪分析可能会增加开销和错误率。本文提出了一种新的算法——人工蜂群和鸽子启发优化混合特征选择算法。ABC-PIO结合了ABC可以产生各种样本的特性,PIO可以快速达到最佳值,Cauchy扰动策略可以改进最优解。所提出的技术档案决策树的准确率为99.01%,海军偏见的准确率77.34%,随机森林的准确率60.89%。比较分析表明,与其他现有技术相比,所提出的具有决策树的ABC-PIO归档了更好的结果。
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An Artificial Bee Colony and Pigeon Inspired Optimization Hybrid Feature Selection Algorithm for Twitter Sentiment Analysis
Twitter Sentiment Study is a difficult task that comprises the various kind of preprocessing phases, including reduction in dimensionality. The reduction in dimensionality ensures minimum computational complexity and improved performance in the classification course. In Twitter data, each tweet has functionality values that may or may not reflect an individual’s response. As a result, when tweets are signified as feature matrices, many sparse data points are created and possibly overhead and error rates increase in sentiment analysis on Twitter. This paper proposes a novel kind of algorithm as Artificial Bee Colony and Pigeon Inspired Optimization Hybrid Feature Selection Algorithm. The ABC-PIO combines with the characteristics that ABC can produce various samples, PIO can reach the best value rapidly and Cauchy perturbation strategy can improve optimal solution. The proposed technique archive Accuracy of 99.01% for Decision tree, 77.34% for Navy Bias and 60.89% Random Forest. The comparative analysis show that the proposed ABC-PIO with Decision tree archive much better results compared to other existing techniques.
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来源期刊
Journal of Computational and Theoretical Nanoscience
Journal of Computational and Theoretical Nanoscience 工程技术-材料科学:综合
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3.9 months
期刊介绍: Information not localized
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