Title of article
Knowledge discovery techniques for predicting country investment risk
Author/Authors
Irma Becerra-Fernandez، نويسنده , , Stelios H. Zanakis، نويسنده , , Steven Walczak، نويسنده ,
Issue Information
ماهنامه با شماره پیاپی سال 2003
Pages
14
From page
787
To page
800
Abstract
This paper presents the insights gained from applying knowledge discovery in databases (KDD) processes for the purpose of developing intelligent models, used to classify a countryʹs investing risk based on a variety of factors. Inferential data mining techniques, like C5.0, as well as intelligent learning techniques, like neural networks, were applied to a dataset of 52 countries. The dataset included 27 variables (economic, stock market performance/risk and regulatory efficiencies) on 52 countries, whose investing risk category was assessed in a Wall Street Journal survey of international experts. The results of applying KDD techniques to the dataset are promising, and successfully classified most countries as compared to the expertsʹ classifications. Implementation details, results, and future plans are also presented.
Keywords
Data mining , Knowledge discovery , Country investing risk
Journal title
Computers & Industrial Engineering
Serial Year
2003
Journal title
Computers & Industrial Engineering
Record number
926332
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