Parameter Learning of Bayesian Network Classifiers Under Computational Constraints

Parameter Learning of Bayesian Network Classifiers Under Computational Constraints

Abstract

We consider online learning of Bayesian network classifiers (BNCs) with reduced-precision parameters, i.e. the conditional-probability tables parameterizing the BNCs are represented by low bit-width fixed-point numbers. In contrast to previous work, we analyze the learning of these parameters using reduced-precision arithmetic only which is important for computationally constrained platforms, e.g. embedded- and ambient-systems, as well as power-aware systems. This requires specialized algorithms since naive implementations of the projection for ensuring the sum-to-one constraint of the parameters in gradient-based learning are not sufficiently accurate. In particular, we present generative and discriminative learning algorithms for BNCs relying only on reduced-precision arithmetic. For several standard benchmark datasets, these algorithms achieve classification-rate performance close to that of BNCs with parameters learned by conventional algorithms using double-precision floating-point arithmetic. Our results facilitate the utilization of BNCs in the foresaid systems.

Grafik Top
Authors
  • Tschiatschek, Sebastian
  • Pernkopf, Franz
Grafik Top
Shortfacts
Category
Paper in Conference Proceedings or in Workshop Proceedings (Paper)
Event Title
European Conference on Machine Learning and Knowledge Discovery in Databases (ECML PKDD)
Divisions
Data Mining and Machine Learning
Event Location
Porto, Portugal
Event Type
Conference
Event Dates
07.-11.09.2015
Series Name
Machine Learning and Knowledge Discovery in Databases
ISSN/ISBN
978-3-319-23527-1
Page Range
pp. 86-101
Date
7 September 2015
Export
Grafik Top