DocumentCode :
855001
Title :
Learning from labeled and unlabeled data using a minimal number of queries
Author :
Kothari, Ravi ; Jain, Vivek
Author_Institution :
IBM India Res. Lab., Indian Inst. of Technol., Hauz Khas, India
Volume :
14
Issue :
6
fYear :
2003
Firstpage :
1496
Lastpage :
1505
Abstract :
The considerable time and expense required for labeling data has prompted the development of algorithms which maximize the classification accuracy for a given amount of labeling effort. On the one hand, the effort has been to develop the so-called "active learning" algorithms which sequentially choose the patterns to be explicitly labeled so as to realize the maximum information gain from each labeling. On the other hand, the effort has been to develop algorithms that can learn from labeled as well as the more abundant unlabeled data. Proposed in this paper is an algorithm that integrates the benefits of active learning with the benefits of learning from labeled and unlabeled data. Our approach is based on reversing the roles of the labeled and unlabeled data. Specifically, we use a Genetic Algorithm (GA) to iteratively refine the class membership of the unlabeled patterns so that the maximum a posteriori (MAP) based predicted labels of the patterns in the labeled dataset are in agreement with the known labels. This reversal of the role of labeled and unlabeled patterns leads to an implicit class assignment of the unlabeled patterns. For active learning, we use a subset of the GA population to construct multiple MAP classifiers. Points in the input space where there is maximal disagreement amongst these classifiers are then selected for explicit labeling. The learning from labeled and unlabeled data and active learning phases are interlaced and together provide accurate classification while minimizing the labeling effort.
Keywords :
genetic algorithms; iterative methods; learning (artificial intelligence); maximum likelihood estimation; query processing; active learning algorithm; active learning phase; data querying; expectation-minimization; genetic algorithm; maximum a posteriori; query number; supervised learning; unlabeled data; Error analysis; Genetic algorithms; Geometry; Iterative algorithms; Labeling; Supervised learning; Unsupervised learning;
fLanguage :
English
Journal_Title :
Neural Networks, IEEE Transactions on
Publisher :
ieee
ISSN :
1045-9227
Type :
jour
DOI :
10.1109/TNN.2003.820446
Filename :
1257412
Link To Document :
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