DocumentCode :
50733
Title :
On Bayesian Network Classifiers with Reduced Precision Parameters
Author :
Tschiatschek, Sebastian ; Pernkopf, Franz
Author_Institution :
Dept. of Electr. Eng., Graz Univ. of Technol., Styria, Austria
Volume :
37
Issue :
4
fYear :
2015
fDate :
April 1 2015
Firstpage :
774
Lastpage :
785
Abstract :
Bayesian network classifier (BNCs) are typically implemented on nowadays desktop computers. However, many real world applications require classifier implementation on embedded or low power systems. Aspects for this purpose have not been studied rigorously. We partly close this gap by analyzing reduced precision implementations of BNCs. In detail, we investigate the quantization of the parameters of BNCs with discrete valued nodes including the implications on the classification rate (CR). We derive worst-case and probabilistic bounds on the CR for different bit-widths. These bounds are evaluated on several benchmark datasets. Furthermore, we compare the classification performance and the robustness of BNCs with generatively and discriminatively optimized parameters, i.e. parameters optimized for high data likelihood and parameters optimized for classification, with respect to parameter quantization. Generatively optimized parameters are more robust for very low bit-widths, i.e. less classifications change because of quantization. However, classification performance is better for discriminatively optimized parameters for all but very low bit-widths. Additionally, we perform analysis for margin-optimized tree augmented network (TAN) structures which outperform generatively optimized TAN structures in terms of CR and robustness.
Keywords :
belief networks; pattern classification; BNC; Bayesian network classifiers; CR; bit-widths; classification performance; classification rate; desktop computers; discrete valued nodes; generatively optimized TAN structures; high data likelihood; low power systems; margin-optimized tree augmented network; optimized parameters; parameter quantization; perform analysis; probabilistic bounds; reduced precision parameters; robustness; Bayes methods; Joints; Probabilistic logic; Quantization (signal); Robustness; Training; Training data; Bayesian network classifiers; custom precision; discriminative learning; quantization;
fLanguage :
English
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/TPAMI.2014.2353620
Filename :
6888528
Link To Document :
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