Ontology-based data mining model management for self-service knowledge discovery

被引:0
作者
Yan Li
Manoj A. Thomas
Kweku-Muata Osei-Bryson
机构
[1] Claremont Graduate University,Center for Information Systems and Technology
[2] Virginia Commonwealth University,undefined
[3] School of Business,undefined
来源
Information Systems Frontiers | 2017年 / 19卷
关键词
Data mining; Model management; Self-service knowledge discovery; Knowledge reuse, DM; ontology;
D O I
暂无
中图分类号
学科分类号
摘要
Data mining (DM) models are knowledge-intensive information products that enable knowledge creation and discovery. As large volume of data is generated with high velocity from a variety of sources, there is a pressing need to place DM model selection and self-service knowledge discovery in the hands of the business users. However, existing knowledge discovery and data mining (KDDM) approaches do not sufficiently address key elements of data mining model management (DMMM) such as model sharing, selection and reuse. Furthermore, they are mainly from a knowledge engineer’s perspective, while the business requirements from business users are often lost. To bridge these semantic gaps, we propose an ontology-based DMMM approach for self-service model selection and knowledge discovery. We develop a DM3 ontology to translate the business requirements into model selection criteria and measurements, provide a detailed deployment architecture for its integration within an organization’s KDDM application, and use the example of a student loan company to demonstrate the utility of the DM3.
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页码:925 / 943
页数:18
相关论文
共 73 条
[1]  
Alavi M(2001)Review: knowledge management and knowledge management systems: conceptual foundations and research issues MIS Quarterly 25 107-136
[2]  
Leidner DE(2013)Key choices in the design of simple knowledge organization system (SKOS) Web Semantics: Science, Services and Agents on the World Wide Web 20 35-49
[3]  
Baker T(2008)Bridging the gap between data mining and decision support: a case-based reasoning and ontology approach Intelligent Data Analysis 12 211-236
[4]  
Bechhofer S(2010)Development of a method for ontology-based empirical knowledge representation and reasoning Decision Support Systems 50 1-20
[5]  
Isaac A(2014)Data-intensive applications, challenges, techniques and technologies: a survey on Big data Information Sciences 275 314-347
[6]  
Miles A(2012)Business intelligence and analytics: from big data to big impact MIS Quarterly 36 1165-1188
[7]  
Schreiber G(2006)Competing on analytics Harvard Business Review 84 98-144
[8]  
Summers E(2002)Understanding ontological engineering Communications of the ACM 45 136-463
[9]  
Charest M(2013)A virtual mart for knowledge discovery in databases Information Systems Frontiers 15 447-136
[10]  
Delisle S(2002)Ontology research and development. Part 1-a review of ontology generation Journal of Information Science 28 123-34