DocumentCode :
395317
Title :
A mixture model and EM algorithm for robust classification, outlier rejection, and class discovery
Author :
Miller, David J. ; Browning, John
Author_Institution :
Dept. of Electr. Eng., Pennsylvania State Univ., University Park, PA, USA
Volume :
2
fYear :
2003
fDate :
6-10 April 2003
Abstract :
Several authors have addressed learning a classifier given a mixed labeled/unlabeled training set. These works assume each unlabeled sample originates from one of the (known) classes. Here, we consider the scenario in which unlabeled points may belong either to known/predefined or to heretofore undiscovered classes. There are several practical situations where such data may arise. We propose a novel statistical mixture model which views as observed data not only the feature vector and the class label, but also the fact of label presence/absence for each point. Two types of mixture components are posited to explain label presence/absence. "Predefined" components generate both labeled and unlabeled points and assume labels are missing at random. "Non-predefined" components only generate unlabeled points-thus, in localized regions, they capture data subsets that are exclusively unlabeled. Such subsets may represent an outlier distribution, or new classes. The components\´ predefined/non-predefined natures are data-driven, learned along with the other parameters via an algorithm based on expectation-maximization (EM). There are three natural applications: (1) robust classifier design, given a mixed training set with outliers; (2) classification with rejections; (3) identification of the unlabeled points (and their representative components) that originate from unknown classes, i.e. new class discovery. We evaluate our method and alternative approaches on both synthetic and real-world data sets.
Keywords :
identification; learning (artificial intelligence); optimisation; signal classification; statistical analysis; EM algorithm; class discovery; class label; data-driven components; exclusively unlabeled data subsets; expectation-maximization algorithm; feature vector; label presence/absence; localized regions; mixed labeled/unlabeled training set; mixed training set; mixture model; new class discovery; observed data; outlier distribution; outlier rejection; real-world data sets; robust classification; robust classifier design; statistical classifier learning; statistical mixture model; synthetic data sets; undiscovered classes; unlabeled points identification; Character recognition; Classification algorithms; Databases; Humans; Labeling; Maximum likelihood estimation; Robustness; Uncertainty;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Acoustics, Speech, and Signal Processing, 2003. Proceedings. (ICASSP '03). 2003 IEEE International Conference on
ISSN :
1520-6149
Print_ISBN :
0-7803-7663-3
Type :
conf
DOI :
10.1109/ICASSP.2003.1202490
Filename :
1202490
Link To Document :
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