DocumentCode :
3541444
Title :
Regularized joint density estimation for multi-instance learning
Author :
Behmardi, Behrouz ; Briggs, Forrest ; Fern, Xiaoli Z. ; Raich, Raviv
Author_Institution :
Sch. of EECS, Oregon State Univ., Corvallis, OR, USA
fYear :
2012
fDate :
5-8 Aug. 2012
Firstpage :
740
Lastpage :
743
Abstract :
We present regularized multiple density estimation (MDE) using the maximum entropy (MaxEnt) framework for multi-instance datasets. In this approach, bags of instances are represented as distributions using the principle of MaxEnt. We learn basis functions which span the space of distributions for jointly regularized density estimation. The basis functions are analogous to topics in a topic model. We propose a distance metric for measuring similarities at the bag level which captures the statistical properties of each bag. We provide a convex optimization method to learn the metric and compare the results with distance based multi-instance learning algorithms, e.g., Citation-kNN and bag-level kernel SVM on two real world datasets. The results show that regularized MDE produces a comparable results in terms of accuracy with reduced computational complexity.
Keywords :
computational complexity; convex programming; learning (artificial intelligence); maximum entropy methods; statistical analysis; support vector machines; MaxEnt framework; bag level similarity measurement; bag-level kernel SVM; basis function learning; citation-kNN; computational complexity reduction; convex optimization method; distance metric learning; distance-based multiinstance learning algorithms; maximum entropy framework; regularized MDE; regularized joint density estimation; regularized multiple density estimation; statistical properties; topic model; Accuracy; Computational complexity; Entropy; Estimation; Kernel; Signal processing algorithms; Support vector machines; Density estimation; Maximum entropy framework; Multiple instance learning; Nuclear norm regularization;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Statistical Signal Processing Workshop (SSP), 2012 IEEE
Conference_Location :
Ann Arbor, MI
ISSN :
pending
Print_ISBN :
978-1-4673-0182-4
Electronic_ISBN :
pending
Type :
conf
DOI :
10.1109/SSP.2012.6319810
Filename :
6319810
Link To Document :
بازگشت