微博情感检测的混合蜘蛛猴优化技术

Manish Soni, Ankur Malhotra
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摘要

情感分析(SA)是一门有趣的数据分析学科,旨在识别和翻译社交媒体网站上表达的各种情感。Twitter是一种社交服务,用户可以通过被称为“tweet”的短消息更新他们的朋友和关注者。本文的目标是提供一种挖掘Twitter情感的技术。根据所表达的情绪,推文可能被视为好的、中性的或消极的。推文的个人特征使得传统的聚类方法不切实际,因此基于元启发式的方法是最佳选择。为了衡量计划技术的效率,我们使用两个数据集:sender2和tweeter。将蜘蛛猴优化、粒子群算法、遗传算法和差异度进化等几种著名的自然启发方法与传统方法进行了比较,以确定其有效性。这样做是为了评估所建议的技术的合法性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Spider Monkey Optimization Technique for Twitter Sentiment Inspection
Sentiment analysis (SA) is an interesting subject of data analysis that aims to recognise and translate the diverse feelings expressed on social media sites. Twitter is a social service where users may update their friends and followers with short messages called “tweets.” This paper's goal is to provide a technique for mining Twitter for sentiments. Based on the sentiment expressed, a tweet might be seen as good, neutral, or negative. The personal character of tweets makes traditional clustering methods impractical, making metaheuristic-based methods the best option. To measure the efficiency of the planned technique, we use two datasets: sender2 and tweeter. Several prominent nature-inspired methods, including Spider-Monkey optimization, Particle-Swarm algorithm, Genetic-Algorithm, and degree of difference Evolution, are compared with the conventional method to determine its validity. This is done so that the legitimacy of the suggested technique can be assessed.
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