基于情感分析的朴素贝叶斯分类器算法识别社会对产品/公司服务的看法

Affandy Affandy, Oktania Nandiyati
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引用次数: 0

摘要

推特是印尼最受欢迎的微博服务,拥有近2300万用户。在大数据时代,来自客户、观察者、潜在消费者或公司产品或服务用户社区的当前推文将极大地帮助公司了解行业和消费者格局,从而确定有助于公司增长的战略计划。然而,Twitter等社交媒体数据的使用受到收集、处理和分析过程中的一些技术困难的阻碍。具体而言,这项研究将推文数据情感分析过程中的朴素贝叶斯分类器算法应用到原型应用程序中,旨在使公司/组织更容易了解人们对其产品或服务的看法。之所以选择NBC算法,是因为该算法即使使用较小的训练数据也能进行良好的分类,但对于处理较大的训练数据具有较高的准确性和处理速度。根据评估结果,发现一个运行良好的原型,其中输入的关键字将触发Twitter API抓取数据,然后可以在每个阶段监控挖掘过程,在过程结束时,系统将在一定时间内以图表形式显示最终的情绪水平值和计算结果日志的表示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentiment Analysis Berbasis Algoritma Naïve Bayes Classsifier untuk Identifikasi Persepsi Masyarakat Terhadap Produk / Layanan Perusahaan
Twitter is the most popular microblogging service in Indonesia, with nearly 23 million users. In the era of big data such as the current tweets from customers, observers, potential consumers, or the community of users of products or services of a company will greatly help companies in knowing the industrial and consumer landscape, so as to determine strategic plans that will contribute to the company's growth. However, the use of data from social media such as Twitter is hampered by a number of technical difficulties in the process of collecting, processing, and analysing. Specifically, this research applies the Naïve Bayes Classifier algorithm in the process of sentiment analysis of tweets data into a prototype application that is intended to make it easier for companies / organizations to know people's perceptions of their products or services. The NBC algorithm was chosen because this algorithm is able to do a good classification even though it uses small training data, but has high accuracy and process speed for handling large training data. From the evaluation results found a prototype running well where the keywords entered will trigger the Twitter API to crawl the data then the mining process can be monitored at each stage and at the end of the process, the system will show the final sentiment level values and the representation of the calculation results log in a chart form over a certain period of time.
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