IS

Weitz, Rob R.

Topic Weight Topic Terms
0.268 data classification statistical regression mining models neural methods using analysis techniques performance predictive networks accuracy
0.129 decision making decisions decision-making makers use quality improve performance managers process better results time managerial
0.121 models linear heterogeneity path nonlinear forecasting unobserved alternative modeling methods different dependence paths efficient distribution
0.101 value business benefits technology based economic creation related intangible cocreation assessing financial improved key economics

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Bansal, Arun 1 Kauffman, Robert J. 1
business value of information technology 1 data quality 1 decision support systems 1 forecasting 1
information economics 1 mortgage-backed securities 1 neural networks 1 prepayment forecasting 1
risk management forecasting systems 1

Articles (1)

Comparing the Modeling Performance of Regression and Neural Networks as Data Quality Varies: A Business Value Approach. (Journal of Management Information Systems, 1993)
Authors: Abstract:
    Under circumstances where data quality may vary (due to inaccuracies or lack of timeliness, for example), knowledge about the potential performance of alternate predictive models can help a decision maker to design a business-value-maximizing information system. This paper examines a real-world example from the field of finance to illustrate a comparison of alternative modeling tools. Two modeling alternatives are used in this example: regression analysis and neural network analysis. There are two main results: (1) Linear regression outperformed neural nets in terms of forecasting accuracy, but the opposite was true when we considered the business value of the forecast. (2) Neural net-based forecasts tended to be more robust than linear regression forecasts as data accuracy degraded. Managerial implications for financial risk management of mortgage-backed security portfolios are drawn from the results.