Representing and Reasoning with Defaults for Learning Agents
Benjamin N. Grosof
AAAI-SS 1993
Bayesian reasoning provides an ideal basis for representing and manipulating uncertain knowledge, with the result that many interesting algorithms in machine learning are based on Bayesian inference. In this paper, we use the Bayesian approach with one and two levels of inference to model the semisupervised learning problem and give its application to the successful kernel classifier support vector machine (SVM) and its variant least-squares SVM (LS-SVM). Taking advantage of Bayesian interpretation of LS-SVM, we develop a semisupervised learning algorithm for Bayesian LS-SVM using our approach based on two levels of inference. Experimental results on both artificial and real pattern recognition problems show the utility of our method. © 2011 IEEE.
Benjamin N. Grosof
AAAI-SS 1993
Ankit Vishnubhotla, Charlotte Loh, et al.
NeurIPS 2023
David Carmel, Haggai Roitman, et al.
ACM TIST
Michael Hersche, Mustafa Zeqiri, et al.
NeSy 2023