Discovery of knowledge of associative relations using opinion mining based on a health platform

被引:0
作者
Joo-Chang Kim
Kyungyong Chung
机构
[1] Kyonggi University,Data Mining Lab., Department of Computer Science
[2] Kyonggi University,Division of Computer Science and Engineering
来源
Personal and Ubiquitous Computing | 2020年 / 24卷
关键词
Data mining; Knowledge discovery; Opinion mining; Healthcare; Social stream;
D O I
暂无
中图分类号
学科分类号
摘要
With the development of ubiquitous computing, people easily access and share a variety of information through searches. Based on the social streams collected through the news, Twitter, web, internet communities, SNS (social network services), and internet boards, accurately searching for information in accordance with the user preferences is necessary. The volume of accumulated social streams rises rapidly with time, and the quality of the referred contents tends to be lowered by information noise, despite their frequencies. Therefore, this study focuses on the discovery of knowledge of associative relations using opinion mining on issues related to health. The proposed method mines rules and discovers knowledge through association analysis and opinion mining of social streams. Correspondingly, unstructured data for three major chronic diseases, namely, high blood pressure, diabetes, and hyperlipidemia, are collected with the use of a crawler. The extracted corpus is used to create transactions, and the association rules of the health corpus are mined. Sets of words with associations are organized to support the decision-making for the choice of words for use in a search engine. The mined association rules of the health corpus are based on relations of words, and meaningful relations are discovered based on opinion mining, i.e., based on a method of analyzing positive or negative aspects of formulated expressions in documents. To achieve this, vocabularies of a sentiment dictionary are used to calculate a frequency-based polarity value and a term frequency–inverse rule frequency (TF–IRF) weight. With the calculated polarity value and TF–IRF weight, the degree of opinion for specific words is drawn from association rules. In this manner, it is possible to express a positive or negative relation between words in a visual manner. Accordingly, the use of association rules and opinion degrees allows the generation of an opinion tree. This helps the conduct of an efficient information search for matters related to health and the formulation of opinion relations from an opinion knowledge tree so as to support decision-making. For performance evaluation, predictions were made in regard to the proposed method, and opinions of test sentences were evaluated. As a result, the precision and recall were excellent. By applying the opinion mining–based knowledge to matters relevant to health, it is possible to reach an accurate decision. In addition, with an inference engine, it is possible to provide a customized UI/UX in an ambient context and thus create added value in health services.
引用
收藏
页码:583 / 593
页数:10
相关论文
共 65 条
  • [1] Song JS(2011)Automatic construction of positive/negative feature-predicate dictionary for polarity classification of product reviews J Korean Inst Inf Sci Eng Softw Appl 38 157-168
  • [2] Lee SW(2016)Webdrama analysis and recommendation using text mining and opinion mining technique of social media Catoon Anim Stud 44 285-306
  • [3] Oh SJ(2018)Design and implementation of a web crawler system for collection of structured and unstructured data J Korea Multimedia Soc 21 199-209
  • [4] Kim K(2017)An ontology-driven context-aware recommender system for indoor shopping based on cellular automata J Ambient Intell Humaniz Comput 8 937-955
  • [5] Chi H(2018)Application of industrial engineering concepts and techniques to ambient intelligence: a case study J Ambient Intell Humaniz Comput 9 215-223
  • [6] Bae SW(2015)Comparison of knowledge, attitudes, and trust for the use of personal health information in clinical research Multimed Tools Appl 74 2391-2404
  • [7] Lee HD(2017)A study on personal information issues and policy direction toward precision medicine Korean J Med Law 25 133-154
  • [8] Cho DS(2016)Associative context mining for ontology-driven hidden knowledge discovery Clust Comput 19 2261-2271
  • [9] Orciuoli F(2017)Emerging risk forecast system using associative index mining analysis Clust Comput 20 547-558
  • [10] Parente M(2013)Intelligent VOC analyzing system using opinion mining J Intell Inf Syst 19 113-125