DocumentCode :
1428510
Title :
Experiments on the application of IOHMMs to model financial returns series
Author :
Bengio, Yoshua ; Lauzon, Vincent-Philippe ; Ducharme, Réjean
Author_Institution :
Dept. d´´Inf. et de Recherche Oper., Montreal Univ., Que., Canada
Volume :
12
Issue :
1
fYear :
2001
fDate :
1/1/2001 12:00:00 AM
Firstpage :
113
Lastpage :
123
Abstract :
Input-output hidden Markov models (IOHMM) are conditional hidden Markov models in which the emission (and possibly the transition) probabilities can be conditioned on an input sequence. For example, these conditional distributions can be linear, logistic, or nonlinear (using for example multilayer neural networks). We compare the generalization performance of several models which are special cases of input-output hidden Markov models on financial time-series prediction tasks: an unconditional Gaussian, a conditional linear Gaussian, a mixture of Gaussians, a mixture of conditional linear Gaussians, a hidden Markov model, and various IOHMMs. The experiments compare these models on predicting the conditional density of returns of market and sector indices. Note that the unconditional Gaussian estimates the first moment with the historical average. The results show that, although for the first moment the historical average gives the best results, for the higher moments, the IOHMMs yielded significantly better performance, as estimated by the out-of-sample likelihood
Keywords :
Gaussian distribution; financial data processing; generalisation (artificial intelligence); hidden Markov models; neural nets; I/O HMM; IOHMM; conditional hidden Markov models; conditional linear Gaussian distribution mixture; conditional return density; emission probabilities; financial returns series; financial time-series prediction tasks; input-output hidden Markov models; market indices; multilayer neural networks; out-of-sample likelihood; sector indices; transition probabilities; unconditional Gaussian distribution; Artificial neural networks; Biological system modeling; Economic forecasting; Hidden Markov models; Input variables; Logistics; Multi-layer neural network; Predictive models; Sequences; Speech recognition;
fLanguage :
English
Journal_Title :
Neural Networks, IEEE Transactions on
Publisher :
ieee
ISSN :
1045-9227
Type :
jour
DOI :
10.1109/72.896800
Filename :
896800
Link To Document :
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