Estimating classification uncertainty of Bayesian decision tree technique on financial data
- ,
- Jonathan E. Fieldsend,
- Derek Partridge,
- Wojtek J. Krzanowski,
- Richard M. Everson,
- Trevor C. Bailey
- University of Exeter
Abstract
Bayesian averaging over classification models allows the uncertainty of classification outcomes to be evaluated, which is of crucial importance for making reliable decisions in applications such as financial in which risks have to be estimated. The uncertainty of classification is determined by a trade-off between the amount of data available for training, the diversity of a classifier ensemble and the required performance. The interpretability of classification models can also give useful information for experts responsible for making reliable classifications. For this reason Decision Trees (DTs) seem to be attractive classification models. The required diversity of the DT ensemble can be achieved by using the Bayesian model averaging all possible DTs. In practice, the Bayesian approach can be implemented on the base of a Markov Chain Monte Carlo (MCMC) technique of random sampling from the posterior distribution. For sampling large DTs, the MCMC method is extended by Reversible Jump technique which allows inducing DTs under given priors. For the case when the prior information on the DT size is unavailable, the sweeping technique defining the prior implicitly reveals a better performance. Within this chapter we explore the classification uncertainty of the Bayesian MCMC techniques on some datasets from the StatLog Repository and real financial data. The classification uncertainty is compared within an Uncertainty Envelope technique dealing with the class posterior distribution and a given confidence probability. This technique provides realistic estimates of the classification uncertainty which can be easily interpreted in statistical terms with the aim of risk evaluation.
Publication Information
Output type
Original language
EnglishPages from-to (Number of pages)
Pages 155-179 (25 pages)Publication milestones
- Published - 15/03/2007
Publication status
Publication series
- Publication series name: Studies in Computational Intelligence
ISSN (Print): 1860-949X
Volume: 36
ISBN (Print)
3540362444, 9783540362449Chapter Number
6External Publication IDs
- Scopus: 34147108778
Host publication title
Perception-based Data Mining and Decision Making in Economics and FinanceHost publication editors
- Ildar Batyrshin
- Leonid Sheremetov
- Janusz Kacprzyk
- Lotfi Zadeh
- Ildar Batyrshin
- Leonid Sheremetov
