• Title/Summary/Keyword: multistrategy learning

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Data Mining in Marketing: Framework and Application to Supply Chain Management

  • Kim, Steven-H;Min, Sung-Hwan
    • Proceedings of the Korea Database Society Conference
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    • 1999.06a
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    • pp.125-133
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    • 1999
  • The objective of knowledge discovery and data mining lies in the generation of useful insights from a store of data. This paper presents a framework for knowledge mining to provide a systematic approach to the selection and deployment of tools for automated learning. Every methodology has its strengths and limitations. Consequently, a multistrategy approach may be required to take advantage of the strengths of disparate technique while circumventing their individual limitations. For concreteness, the general framework for data mining in marketing is examined in the context of developing agents for optimizing a supply chain network.

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Data Mining in Marketing: Framework and Application to Supply Chain Management

  • Kim, Steven H.;Min, Sung-Hwan
    • Proceedings of the Korea Inteligent Information System Society Conference
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    • 1999.03a
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    • pp.125-133
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    • 1999
  • The objective of knowledge discovery and data mining lies in the generation of useful insights from a store of data. This paper presents a framework for knowledge mining to provide a systematic approach to the selection and deployment of tools for automated learning. Every methodology has its strengths and limitations. Consequently, a multistrategy approach may be required to take advantage of the strengths of disparate technique while circumventing their individual limitations. For concreteness, the general framework for data mining in marketing is examined in the context of developing agents for optimizing a supply chain network.

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A Multistrategy Learning System to Support Predictive Decision Making

  • Kim, Steven H.;Oh, Heung-Sik
    • The Korean Journal of Financial Studies
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    • v.3 no.2
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    • pp.267-279
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    • 1996
  • The prediction of future demand is a vital task in managing business operations. To this end, traditional approaches often focused on statistical techniques such as exponential smoothing and moving average. The need for better accuracy has led to nonlinear techniques such as neural networks and case based reasoning. In addition, experimental design techniques such as orthogonal arrays may be used to assist in the formulation of an effective methodology. This paper investigates a multistrategy approach involving neural nets, case based reasoning, and orthogonal arrays. Neural nets and case based reasoning are employed both separately and in combination, while orthoarrays are used to determine the best architecture for each approach. The comparative evaluation is performed in the context of an application relating to the prediction of Treasury notes.

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A Development of Knowledge Error Analysis Methodology for practical use of Expert Systems (전문가시스템 실용화를 위한 지식오류분석방법론 연구)

  • Kim, Hyeon-Su
    • Asia pacific journal of information systems
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    • v.6 no.2
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    • pp.77-105
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    • 1996
  • The accuracy of knowledge is a major concern for expert system developers and users. Machine learning approaches have recently been found to be useful in knowledge acquisition for expert systems. However, the accuracy of concept acquired from machine learning could not be analyzed in most cases. In this paper we develop a comprehensive knowledge error analysis methodology for practical use of expert systems. Decision tree induction is an important type of machine learning method for business expert systems. Here we start to analyze with knowledge acquired from decision tree induction method, and extend the results to develop error analysis methodology for general machine learning methods. We give several examples and illustrations for these results. We also discuss the applicability of these results to multistrategy learning approaches.

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A Combined Method of Rule Induction Learning and Instance-Based Learning (귀납법칙 학습과 개체위주 학습의 결합방법)

  • Lee, Chang-Hwan
    • The Transactions of the Korea Information Processing Society
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    • v.4 no.9
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    • pp.2299-2308
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    • 1997
  • While most machine learning research has been primarily concerned with the development of systems that implement one type of learning strategy, we use a multistrategy approach which integrates rule induction learning and instance-based learning, and show how this marriage allows for overall better performance. In the rule induction learning phase, we derive an entropy function, based on Hellinger divergence, which can measure the amount of information each inductive rule contains, and show how well the Hellinger divergence measures the importance of each rule. We also propose some heuristics to reduce the computational complexity by analyzing the characteristics of the Hellinger measure. In the instance-based learning phase, we improve the current instance-based learning method in a number of ways. The system has been implemented and tested on a number of well-known machine learning data sets. The performance of the system has been compared with that of other classification learning technique.

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Predicting Nonlinear Processes for Manufacturing Automation: Case Study through a Robotic Application

  • Kim, Steven H.;Oh, Heung-Sik
    • Journal of Korean Institute of Industrial Engineers
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    • v.23 no.2
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    • pp.249-260
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    • 1997
  • The manufacturing environment is rife with nonlinear processes. In this context, an intelligent production controller should be able to predict the dynamic behavior of various subsystems as they react to transient environmental conditions, the varying internal condition of the manufacturing plant, and the changing demands of the production schedule. This level of adaptive capability may be achieved through a coherent methodology for a learning coordinator to predict nonlinear and stochastic processes. The system is to serve as a real time, online supervisor for routine activities as well as exceptional conditions such as damage, failure, or other anomalies. The complexity inherent in a learning coordinator can be managed by a modular architecture incorporating case based reasoning. In the interest of concreteness, the concepts are presented through a case study involving a knowledge based robotic system.

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