多趋势推特情绪分析:改进结果的协作方法

Keerthika J, Hemapriya N, A. R, Karpagathareni S, B. S
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引用次数: 0

摘要

在这个社交媒体用户不断增长的时代,Twitter拥有大量的日常用户,通过Twitter来交流他们的想法。本文提供了一种从推文中提取情绪的方法,以及一种将各种推文分类为乐观、不利或无偏见的方法。它是指对文本源中所表达的情感进行识别和分类。用于数据提取的现有Twitter api用于挖掘公共Twitter数据。tweet将根据与我们关注的领域相关的几个精心选择的关键字来选择。在我们提出的方法中,我们从各种tweet中收集各种情绪数据,以训练和生成更精确和可靠的每种趋势的情绪分类器。该方法从在线用户评价中自动提取主题的关键要素。由于tweet在格式上通常是非结构化的,因此必须首先将其转换为结构化格式。之后,数据被输入到几个模型中进行训练,并用于对最佳情感分类器进行排名。这个设计的目的是得到一个可以使用Twitter对真实世界数据的情感进行分类的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi Trend Twitter Sentiment Analysis: Collaborative Approach for Improved Results
Twitter has a significant number of daily users through which tweets are utilized to communicate their thoughts in this era of growing social media users. This paper offers a way to haul out sentiments from tweets as well as a method for sorting out various tweets as optimistic, adverse, or unbiased. It refers to identifying and classifying the sentiments expressed in the text source. The existing Twitter APIs for data extraction are used to mine public Twitter data. Tweets would be chosen based on a few carefully chosen keywords related to the domain of our concern. In our proposed method, we collected various sentiment data from a variety of tweets to train and produce more precise and reliable sentiment classifiers for each trend. This method automatically extracts the key elements of subjects from online user evaluations. Since tweets are generally unstructured in format, they must first be converted into structured format. And after that, the data is fed into several models for training and used to rank the best sentiment classifier. The intention of this design is to arrive at a model that can classify sentiments of real-world data using Twitter.
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