Title :
Constraint-Based, Transductive Learning for Distributed Ensemble Classification
Author :
Miller, David J. ; Pal, Siddharth ; Wang, Yue
Author_Institution :
Dept. of EE, Penn State Univ., University Park, PA
Abstract :
We consider ensemble classification when there is no common labeled data for designing the function which aggregates classifier decisions. In recent work, we dubbed this problem distributed ensemble classification, addressing e.g. when local classifiers are trained on different (e.g. proprietary, legacy) databases or operate on different sensing modalities. Typically, fixed (untrained) rules of classifier combination such as voting methods are used in this case. However, these may perform poorly, especially when the local class priors, used in training, differ from the true (test batch) priors. Alternatively, we proposed a transductive strategy, optimizing the combining rule for an objective function measured on the test batch. We proposed both maximum likelihood (ML) and information-theoretic (IT) objectives and found that IT achieved superior performance. Here, we identify that the fundamental advantage of the IT method is its ability to properly account for statistical redundancy in the ensemble. We also develop an extension of IT that improves its performance. Experiments are conducted on the UC Irvine machine learning repository.
Keywords :
information theory; learning (artificial intelligence); maximum likelihood estimation; pattern classification; UC Irvine machine learning repository; constraint-based learning; distributed ensemble classification; ensemble statistical redundancy; fixed untrained) rules; information-theory; maximum likelihood; transductive learning; transductive strategy; Aggregates; Distributed databases; Electronic mail; Extraterrestrial measurements; Image databases; Machine learning; Performance evaluation; Testing; Training data; Voting;
Conference_Titel :
Machine Learning for Signal Processing, 2006. Proceedings of the 2006 16th IEEE Signal Processing Society Workshop on
Conference_Location :
Arlington, VA
Print_ISBN :
1-4244-0656-0
Electronic_ISBN :
1551-2541
DOI :
10.1109/MLSP.2006.275514