By Binner, J. M. Binner, G. Kendall
Synthetic intelligence is a consortium of data-driven methodologies such as man made neural networks, genetic algorithms, fuzzy common sense, probabilistic trust networks and computing device studying as its parts. we've got witnessed a beautiful effect of this data-driven consortium of methodologies in lots of parts of reviews, the industrial and monetary fields being of no exception. particularly, this quantity of accumulated works will provide examples of its impression at the box of economics and finance. This quantity is the results of the choice of top quality papers awarded at a different consultation entitled 'Applications of man-made Intelligence in Economics and Finance' on the '2003 foreign convention on man made Intelligence' (IC-AI '03) held on the Monte Carlo inn, Las Vegas, Nevada, united states, June 23-26 2003. The exact consultation, organised through Jane Binner, Graham Kendall and Shu-Heng Chen, was once awarded on the way to draw cognizance to the large variety and richness of the purposes of synthetic intelligence to difficulties in Economics and Finance. This quantity may still attract economists drawn to adopting an interdisciplinary method of the research of financial difficulties, laptop scientists who're searching for strength purposes of synthetic intelligence and practitioners who're trying to find new views on easy methods to construct types for daily operations.
There are nonetheless many vital synthetic Intelligence disciplines but to be coated. between them are the methodologies of self sustaining part research, reinforcement studying, inductive logical programming, classifier structures and Bayesian networks, let alone many ongoing and hugely attention-grabbing hybrid structures. the way to make up for his or her omission is to go to this topic back later. We definitely wish that we will accomplish that within the close to destiny with one other quantity of 'Applications of synthetic Intelligence in Economics and Finance'.
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Additional info for Applications of Artificial Intelligence in Finance and Economics, Volume 19 (Advances in Econometrics)
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