利益相关者满意度测量的情感分析

Ni Luh Ratniasih, Ni Wayan Ninik Jayanti
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引用次数: 0

摘要

衡量涉众的满意度是非常重要的,以便为开发和实施改进策略的目的获得反馈和输入。ITB STIKOM Bali每学期都会定期测量学生利益相关者的满意度。本研究旨在分析利益相关者的意见,以产生对利益相关者满意度的情绪分析。所使用的数据是对2020/2021年奇数学期利益相关者满意度(学生)测量结果的评论,这些结果是通过问卷填写的。本研究使用的算法是Naïve贝叶斯分类器(NBC)。本研究的研究方法包括问题识别和文献研究、利益相关者满意度(学生)数据收集、数据预处理、特征提取等几个阶段,以便使用Naïve贝叶斯分类器(NBC)算法进行分类。使用的训练数据是200个数据,训练数据是2133个数据。本研究的结果可以为ITB STIKOM Bali提供整体学生评论结果的建议,其中产生的情绪百分比为58%的积极情绪和42%的消极情绪。
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SENTIMENT ANALYSIS OF STAKEHOLDER SATISFACTION MEASUREMENT
Measuring the satisfaction of stakeholders is very impoirtant in order to get feedback and input for the purposes of developing and implementing the improvement strategies. ITB STIKOM Bali routinely measures student stakeholder satisfaction every semester. This study aims to analyze stakeholder comments to generate sentiment analysis on stakeholder satisfaction. The data used are comments on the results of the measurement of stakeholder satisfaction (students) for the Odd Semester of 2020/2021 which are filled out through questionnaire. The algorithm used in this research is the Naïve Bayes Classifier (NBC). The research method in this study consisted of several stages, namely problem identification and literature study, data collection on stakeholder satisfaction (students), data preprocessing, feature extraction in order to facilitate classification using the Naïve Bayes Classifier (NBC) algorithm. The training data used is 200 data while the training data is 2133 data. The results of this study can provide recommendations to ITB STIKOM Bali for the results of student comments as a whole where the percentage of sentiment generated is 58% positive sentiment and 42% negative sentiment.
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审稿时长
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