This paper analyses the predictive performance of standard techniques for the `logical analysis of data' (LAD), within a probabilistic framework. Improving and extending earlier results, we bound the generalization error of classifiers produced by standard LAD methods in terms of their complexity and how well they fit the training data. We also obtain bounds on the predictive accuracy which depend on the extent to which the underlying LAD discriminant function achieves a large separation (a `large margin') between (most of) the positive and negative observations
. The paper describes a new, logic-based methodology for analyzing observations. The key features of...
A number of results have bounded generalization of a classier in terms of its margin on the training...
International audienceIn this paper we propose a general framework to study the generalization prope...
This paper analyzes the predictive performance of standard techniques for the 'logical analysis of d...
AbstractThis paper analyzes the predictive performance of standard techniques for the ‘logical analy...
We analyse the generalisation accuracy of standard techniques for the ‘logical analysis of data’, wi...
We analyse the generalisation accuracy of standard techniques for the ‘logical analysis of data’, wi...
We derive new margin-based inequalities for the probability of error of classifiers. The main featur...
Thesis (Ph. D.)--University of Rochester. Dept. of Computer Science, 1995. Simultaneously published ...
Logical Analysis of Data (LAD) is a machine learning/data mining methodology that combines ideas fro...
AbstractWe analyse the generalisation accuracy of standard techniques for the ‘logical analysis of d...
Techniques for the logical analysis of binary data have successfully been applied to non-binary data...
AbstractTechniques for the logical analysis of binary data have successfully been applied to non-bin...
In this paper we propose a general framework to study the generalization properties of binary classi...
A number of results have bounded generalization error of a classifier in terms of its margin on the ...
. The paper describes a new, logic-based methodology for analyzing observations. The key features of...
A number of results have bounded generalization of a classier in terms of its margin on the training...
International audienceIn this paper we propose a general framework to study the generalization prope...
This paper analyzes the predictive performance of standard techniques for the 'logical analysis of d...
AbstractThis paper analyzes the predictive performance of standard techniques for the ‘logical analy...
We analyse the generalisation accuracy of standard techniques for the ‘logical analysis of data’, wi...
We analyse the generalisation accuracy of standard techniques for the ‘logical analysis of data’, wi...
We derive new margin-based inequalities for the probability of error of classifiers. The main featur...
Thesis (Ph. D.)--University of Rochester. Dept. of Computer Science, 1995. Simultaneously published ...
Logical Analysis of Data (LAD) is a machine learning/data mining methodology that combines ideas fro...
AbstractWe analyse the generalisation accuracy of standard techniques for the ‘logical analysis of d...
Techniques for the logical analysis of binary data have successfully been applied to non-binary data...
AbstractTechniques for the logical analysis of binary data have successfully been applied to non-bin...
In this paper we propose a general framework to study the generalization properties of binary classi...
A number of results have bounded generalization error of a classifier in terms of its margin on the ...
. The paper describes a new, logic-based methodology for analyzing observations. The key features of...
A number of results have bounded generalization of a classier in terms of its margin on the training...
International audienceIn this paper we propose a general framework to study the generalization prope...