基于情感本体的肯尼亚推文情感检测

IF 0.3 4区 材料科学 Q4 MATERIALS SCIENCE, CERAMICS
Cleophus Kiprop Kurgat, L. Nderu
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引用次数: 0

摘要

目的:本研究的目的是将肯亚推文的情绪侦测作为侦测和辨识网民各种情绪的强大工具,并提供关键分析,可用于各种平台的决策。研究方法:本研究采用描述性研究设计方法。研究人员更喜欢这种方法,因为它可以深入研究这个问题。目标人群将是在肯尼亚拥有10万至20万twitter粉丝的twitter账户持有人。数据分析采用描述性和推断性统计。该研究将采用人口普查方法从受访者收集数据,因此不会使用抽样技术。根据Larry(2013)的说法,人口普查是对人口中所有元素的统计。样本量为150名受访者。定量数据采用多元回归分析。所产生的定性数据使用社会科学统计软件包(SPSS)第20版进行分析。结果:本研究有效率为64%。研究结果表明,标签、表情符号、动图和形容词与肯尼亚的情绪检测呈正相关。结论:R平方值为0.715,即情感本体中对应的分类有71.5%可以用(hashtag、emojis、GIF和形容词)来解释或预测,表明模型与研究数据拟合。回归分析结果显示,因变量与自变量之间存在显著正相关(β = 0.715), p=0.000 <0.05)。政策建议:最后,研究建议twitter账户持有人应该拥抱各种情绪检测平台,以提高他们表达问题的方式,并在其他社交媒体平台上进行进一步的研究,看看是否可以获得相同的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EMOTION DETECTION ON KENYAN TWEETS USING EMOTION ONTOLOGY
Purpose: The purpose of the study was emotion detection on Kenyan tweets as a powerful tool in detecting and recognizing the various feelings among netizens and provide critical analytics that can be used in various platforms for decision making.Methodology: This research study adopted a descriptive research design approach. The researcher preferred this method because it allowed an in-depth study of the subject. The target population will be twitter account holders with twitter followers ranging between 100,000 up to 2000, 000 in Kenya. Data was analyzed using descriptive and inferential statistics. The study will employ a census approach to collect data from the respondents hence no sampling techniques will be used. According to Larry (2013) a census is a count of all the elements in a population. The sample size will be the 150 respondents .Quantitative data was analyzed using multiple regression analysis. The qualitative data generated was analyzed by use of Statistical Package of Social Sciences (SPSS) version 20.Results: The response rate of the study was 64%.The findings of the study indicated that hashtags, emojis, GIF’s and adjectives have a positive relationship with emotion detection in Kenya.Conclusion: R square value of 0.715 means that 71.5% of the corresponding categorization in emotion ontology can be explained or predicted by (hashtags, emojis, GIF’s and adjectives) which indicated that the model fitted the study data. The results of regression analysis revealed that there was a significant positive relationship between dependent variable and independent variable at (β = 0.715), p=0.000 <0.05).Policy recommendation: Finally, the study recommended that twitter account holders should embrace various emotion detecting platforms so as to improve how they articulate issues and further researches should to be carried out in other social media platforms to find out if the same results can be obtained.
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来源期刊
CiteScore
0.30
自引率
0.00%
发文量
0
审稿时长
>12 weeks
期刊介绍: The Journal of the Society of Glass Technology was published between 1917 and 1959. There were four or six issues per year depending on economic circumstances of the Society and the country. Each issue contains Proceedings, Transactions, Abstracts, News and Reviews, and Advertisements, all thesesections were numbered separately. The bound volumes collected these pages into separate sections, dropping the adverts. There is a list of Council members and Officers of the Society and earlier volumes also had lists of personal and company members. JSGT was divided into Part A Glass Technology and Part B Physics and Chemistry of Glasses in 1960.
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