Article ID Journal Published Year Pages File Type
479870 European Journal of Operational Research 2014 8 Pages PDF
Abstract

Funding small and medium-sized enterprises (SMEs) to support technological innovation is critical for national competitiveness. Technology credit scoring models are required for the selection of appropriate funding beneficiaries. Typically, a technology credit-scoring model consists of several attributes and new models must be derived every time these attributes are updated. However, it is not feasible to develop new models until sufficient historical evaluation data based on these new attributes will have accumulated. In order to resolve this limitation, we suggest the framework to update the technology credit scoring model. This framework consists of ways to construct new technology credit-scoring model by comparing alternative scenarios for various relationships between existing and new attributes based on explanatory factor analysis, analysis of variance, and logistic regression. Our approach can contribute to find the optimal scenario for updating a scoring model.

► Updating credit scoring model with new screening attributes is proposed. ► Various relationships between existing and new attributes are investigated. ► Factor Analysis, ANOVA, and logistic regression are used to confirm the best model.

Related Topics
Physical Sciences and Engineering Computer Science Computer Science (General)
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