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Applying Innovative Model and Optimize Business Management for Product Market

The Journal of Distribution Science / The Journal of Distribution Science, (P)1738-3110; (E)2093-7717
2013, v.11 no.3, pp.13-22
https://doi.org/https://doi.org/10.15722/jds.11.3.201303.13
liao, Shih-chung
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Abstract

Purpose - Product purpose for optimal values solution for synthesize evaluative criteria and optimize product design values. In addition, product designer has to consider the product design to conform to project, laws and regulations, authentication, from the product design stage. Research design, data, methodology - How to use an evaluative criteria model's imprecise market data by evaluative criteria research design; product mapping relationships between design parameters and customer requirements using product predicted value method. An evaluative criteria model and their associated criteria status, product evaluative criteria model of results. Results - Therefore, after the enterprise product design project analysis, effectiveness and the customer degree of satisfaction must be appraised to obtain the maximum value for the benefit on behalf of the implementation goals, the promotion product level and market competition strength. Conclusions - In multi criterion decision making (MCDM), using its searching software capacity to obtain the optimal solution.

keywords
Multi Criterion Decision Making (MCDM), Evaluative Criteria Model, Digital Product Design, Fuzzy Theory, Products Design

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The Journal of Distribution Science