决策树与Naïve贝叶斯在吸烟感知情感分析中的应用

Muhammad Khairul Mizan Khairul Anwar, M. Yusoff, M. Kassim
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引用次数: 1

摘要

在许多国家,吸烟者的数量仍然很大。吸烟者的趋势似乎一直在变化,尤其是在马来西亚。然而,到2045年,无烟国家是目标之一。因此,有必要看到吸烟的趋势,因为它可以帮助有关机构跟踪吸烟趋势。现在,人们可以感知人们对吸烟的看法,而不仅仅是使用传统的方法,如调查、访谈和问卷调查,这些都是确定当前吸烟趋势的流行方法。这些方法需要时间、成本和实地工作。与数字化和工业4.0并行,趋势分析方法以多种形式建立,如Twitter,网站和Facebook。本文的重点是看到决策树和朴素贝叶斯在马来西亚三个州对吸烟感知进行情绪分析的利用。采用该方法根据单词和双词搜索词将约4500条推文分类为正面、负面和中性。决策树在应用于单词搜索词数据集时表现更好,而Naïve贝叶斯在应用于双词推文搜索词数据集时表现更好。研究结果表明,这项工作有利于获得当前吸烟者感知的快速有效结果,这将有助于当局制定新的解决方案来支持无烟一代倡议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decision Tree and Naïve Bayes for Sentiment Analysis in Smoking Perception
The number of smokers is still significant in many countries. The trend of smokers has seemed to keep changing in time, especially in Malaysia. However, a smoke-free nation is one of the aims by 2045. Thus, there is a need to see the trend of smoking as it can be one the assistances to the relevant agencies to track the smoking trend. Perceiving the sentiment on smoking is now possible instead of only utilizing the traditional approaches like surveys, interviews, and questionnaires are popular methods for identifying current smoking trends. These approaches acquire time and cost, and fieldwork. In parallel with digitization and IR 4.0, the trend analysis methods are established in many forms, such as Twitter, web site, and Facebook. This paper's focal point is to see the utilization of the Decision Tree and Naive Bayes to perform sentiment analysis on smoking perceptions in three states in Malaysia. The methods are employed to classify the about 4500 tweets into positive, negative and neutral based on one-word and two-word search terms. The decision tree performs better when applied to the one-word search term data set, while Naïve Bayes is better for the two-word tweets search term data set. The finding demonstrates that this work is beneficial to obtain a quick and efficient result of the current smoker's perception, which will help the authorities develop new solutions to support the smoke-free generation initiative.
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