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Finding Useful Solutions in Online Knowledge Communities: A Theory-Driven Design and Multilevel Analysis

Xiaomo Liu, G. Alan Wang, Weiguo Fan, Zhongju ZhangInformation Systems数字化转型UTD24
Information Systems Research2020-05-07Virginia Tech; University of Iowa; Arizona State UniversityDOI
Citations116
Influential6
References72
Semantic Scholar
TL;DR

A kernel theory of knowledge adoption model is utilized and a novel text analytic framework is proposed to classify the usefulness of solutions in online knowledge communities to help researchers better understand knowledge adoption.

In this study, we utilize a kernel theory of knowledge adoption model and propose a novel text analytic framework to classify the usefulness of solutions in online knowledge communities. The study combines multiple disciplines (behavioral, empirical, design science, and technical) to tackle an important and relevant business problem: how to effectively manage an online knowledge repository and identify useful solutions. Our framework can be implemented in online knowledge communities to improve users’ experience of searching for useful knowledge. The proposed framework has the potential to guide the development of customer-facing chatbots, which understand human-language questions and return helpful answers immediately.

Computer scienceKnowledge managementData scienceEmpirical researchKnowledge Management and SharingDigital Marketing and Social MediaOpen Source Software Innovations