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Analysis and Utilization of Online Community Information for Technology Planning : 기술기획을 위한 온라인 커뮤니티 정보의 분석 및 활용

DC Field Value Language
dc.contributor.advisor박용태-
dc.contributor.author김지은-
dc.date.accessioned2017-07-13T06:06:34Z-
dc.date.available2017-07-13T06:06:34Z-
dc.date.issued2016-02-
dc.identifier.other000000131846-
dc.identifier.urihttps://hdl.handle.net/10371/118276-
dc.description학위논문 (박사)-- 서울대학교 대학원 : 공과대학 산업·조선공학부, 2016. 2. 박용태.-
dc.description.abstractIn the era of disruptive innovation, a core facet of technology planning entails exploring and analyzing information from a variety of external sources. With the development of information and communication technology, we now have means to both access and analyze a very effective source of such kind: online communities. The massive amount of information generated in online communities, where a diverse group of individuals voluntarily share opinions, ideas, and data, patently carries powerful potential in aiding technology planning. Despite their conceptual utility, previous studies have lacked empirical engagement on the role of online communities and leveraging of online community information into technology planning processes. The question, then, is how to distill the helpful information from swaths of data.
Within this context, this thesis explores how to analyze and utilize the online community information to help in technology planning. It begins by distinguishing two types of online communities relevant for our purpose: tech-discourse community and tech-foresight community. First, the tech-discourse community, where tangible and foreseeable future is discussed among user innovators, can be a source for identifying potential needs and user ideas
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dc.description.abstractas a representative case of tech-discourse community, the thesis discusses mobile App Store community. Second, the tech-foresight community, where conceptual and distant future is explored among large number of participants, can be a source for exploring potential disruptive signals and scenarios of future technology. This study especially coins the information from tech-foresight communities as futuristic data.
The thesis consists of three research themes and six corresponding modules. The first theme aims to analyze the characteristics in tech-discourse and tech-foresight communities. Research module #1 analyzes the patterns of innovation in tech-discourse communities, choosing mobile application services from App Store as a representative case. In consequence, the module finds that innovations in tech-discourse communities are often based on divergence and convergence of existing products. Research module #2 analyzes the potential of futuristic data in tech-foresight communities. Since the concept of futuristic data is new in technology planning, futuristic data is defined and analyzed in terms of its utility in technology foresight. By comparing it to patent data in terms of future-orientation, information scope, and perspective, the module identifies futuristic data in tech-foresight communities as a potent source of foresight.
The second theme aims to identify and take advantage of opportunities of innovation from tech-discourse communities. Research module #3 scans potential user needs from tech-discourse communities. To this end, the module introduces user-centric service map to discover new product opportunities in service vacuums, and makes suggestions toward those opportunities by using adjacent reference services. Research module #4 implements on user ideas based on existing products. The module focuses on more active and enthusiastic user innovators ideas, converting them into new product opportunities that are further developed by using reference services. To this end, text mining-based case-based reasoning approach is suggested.
The last theme aims to take advantage of information from tech-foresight communities into technology planning. Research module #5 visually scans potential disruptive signals from futuristic data for technology roadmapping. In this module, potential disruptive signals are narrowed down through three successive keyword maps: self-organizing feature map-based keyword cluster map, treemap-based keyword intensity map, and network-based keyword relationship map. Research module #6 extracts rules to build scenarios from futuristic data. This module focuses on fuzzy cognitive map-based scenario building, and the modeling elements such as concept nodes and their causal edges are identified by text mining and fuzzy association rule mining.
In whole, this thesis can help to provide concrete and systematic tools that facilitate technology planning by considering both user innovation and disruptive innovation. Ultimately, the tools can serve technology planners to proactively investigate innovation opportunities and drivers and candidates of future technology by tapping into the massive and ever-growing collective knowledge from a large number of voluntary participants.
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dc.description.tableofcontentsChapter 1. Introduction 1
1.1 Background and motivation 1
1.2 Purpose 7
1.3 Scope and framework 10
1.4 Thesis outline 15

Chapter 2. Background 17
2.1 Theoretical background 17
2.1.1 Tech-discourse community information 17
2.1.2 Tech-foresight community information 23
2.2 Methodological background 33
2.2.1 Technology foresight methods 33
2.2.2 Methods utilized in this thesis 39

Chapter 3. Analysis of online community information 54
3.1 Analyzing patterns of innovation in tech-discourse community 55
3.1.1 Introduction 55
3.1.2 Literature review 57
3.1.3 Definition of components of digital content services 63
3.1.4 Classification scheme 65
3.1.5 Methodology of App Store apps case 69
3.1.6 Characteristics of divergence 71
3.1.7 Characteristics of convergence 78
3.1.8 Conclusions 85
3.2 Analyzing potential of futuristic data in tech-foresight community 88
3.2.1 Introduction 88
3.2.2 Methodology 89
3.2.3 Comparison of futuristic data with patent data 93
3.2.4 Integration of futuristic data with patent data 101
3.2.5 Conclusions 106

Chapter 4. Utilization of tech-discourse community information 108
4.1 Scanning potential user needs 109
4.1.1 Introduction 109
4.1.2 Context of use and potential needs 112
4.1.3 Proposed approach 115
4.1.4 Case of App Store apps 124
4.1.5 Discussion 145
4.1.6 Conclusions 150
4.2 Implementing user ideas based on existing products 155
4.2.1 Introduction 155
4.2.2 Attempts of textual CBR 157
4.2.3 Proposed approach 158
4.2.4 Case of App Store apps 168
4.2.5 Discussion and conclusions 180

Chapter 5. Utilization of tech-foresight community information 185
5.1 Scanning potential disruptive signals 186
5.1.1 Introduction 186
5.1.2 Related works 189
5.1.3 Proposed approach 191
5.1.4 Illustrative case of wearable computing technology 206
5.1.5 Discussions and conclusions 217
5.2 Extracting rules to build scenarios 220
5.2.1 Introduction 220
5.2.2 Fuzzy Cognitive Map-based scenario planning 224
5.2.3 Futuristic data-driven scenario building 225
5.2.4 Illustrative case study: Electric Vehicle (EV) scenarios 234
5.2.5 Discussion and conclusions 249

Chapter 6. Conclusions 252
6.1 Summary and contributions 252
6.2 Limitations and future research 254

Bibliography 258
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dc.formatapplication/pdf-
dc.format.extent7786477 bytes-
dc.format.mediumapplication/pdf-
dc.language.isoen-
dc.publisher서울대학교 대학원-
dc.subjectOnline community information-
dc.subjectTechnology planning-
dc.subjectUser innovation-
dc.subjectDisruptive innovation-
dc.subjectApp Store-
dc.subjectFuturistic data-
dc.subject.ddc623-
dc.titleAnalysis and Utilization of Online Community Information for Technology Planning-
dc.title.alternative기술기획을 위한 온라인 커뮤니티 정보의 분석 및 활용-
dc.typeThesis-
dc.description.degreeDoctor-
dc.citation.pagesx, 288-
dc.contributor.affiliation공과대학 산업·조선공학부-
dc.date.awarded2016-02-
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