Automated generation of new knowledge to support managerial decision‐making: case study in forecasting a stock market

Abstract: The deluge of data available to managers underscores the need to develop intelligent systems to generate new knowledge. Such tools are available in the form of learning systems from artificial intelligence. This paper explores how the novel tools can support decision‐making in the ubiquitous managerial task of forecasting.

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