TheoryOn: A Design Framework and System for Unlocking Behavioral Knowledge Through Ontology Learning

MIS Q. Pub Date : 2020-12-01 DOI:10.25300/MISQ/2020/15323
Jingjing Li, Kai R. T. Larsen, A. Abbasi
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引用次数: 30

Abstract

The scholarly information-seeking process for behavioral research consists of three phases: searching, accessing, and processing of past research. Existing IT artifacts, such as Google Scholar, have in part addressed the searching and accessing phases, but fall short of facilitating the processing phase, creating a knowledge inaccessibility problem. We propose a behavioral ontology learning from text (BOLT) design framework that presents concrete prescriptions for developing systems capable of supporting researchers during their processing of behavioral knowledge. Based upon BOLT, we developed a search engine— TheoryOn—to allow researchers to directly search for constructs, construct relationships, antecedents, and consequents, and to easily integrate related theories. Our design framework and search engine were rigorously evaluated through a series of data mining experiments, a randomized user experiment, and an applicability check. The data mining experiment results lent credence to the design principles prescribed by BOLT. The randomized experiment compared TheoryOn with EBSCOhost and Google Scholar across four information retrieval tasks, illustrating TheoryOn’s ability to reduce false positives and false negatives during the information-seeking process. Furthermore, an in-depth applicability check with IS scholars offered qualitative support for the efficacy of an ontology-based search and the usefulness of TheoryOn during the processing phase of existing research. The evaluation results collectively underscore the significance of our proposed design artifacts for addressing the knowledge inaccessibility problem for behavioral research literature.
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理论:通过本体学习解锁行为知识的设计框架与系统
行为研究的学术信息寻求过程包括三个阶段:搜索、获取和处理过去的研究。现有的IT工件,如谷歌Scholar,已经部分地解决了搜索和访问阶段,但在促进处理阶段方面做得不够,从而产生了知识不可访问的问题。我们提出了一个基于文本的行为本体学习(BOLT)设计框架,该框架为开发能够支持研究人员处理行为知识的系统提供了具体的处方。在BOLT的基础上,我们开发了一个搜索引擎——theoryon -,让研究人员可以直接搜索构式、构式关系、前因和结果,并轻松整合相关理论。我们的设计框架和搜索引擎经过了一系列数据挖掘实验、随机用户实验和适用性检查的严格评估。数据挖掘实验结果验证了BOLT的设计原则。该随机实验将TheoryOn与EBSCOhost和b谷歌Scholar在四项信息检索任务中进行了比较,说明了TheoryOn在信息检索过程中减少误报和误报的能力。此外,与IS学者进行了深入的适用性检查,为基于本体的搜索的有效性和TheoryOn在现有研究处理阶段的有用性提供了定性支持。评估结果共同强调了我们提出的设计工件对于解决行为研究文献中知识不可接近问题的重要性。
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