Many learning problems in real world applications involve rich datasets comprising multiple information modalities. In this work, we study co-regularized PLSA(coPLSA) as an efficient solution to probabilistic topic analysis of multi-modal data. In coPLSA, similarities between topic compositions of a data entity across different data modalities are measured with divergences between discrete probabilities, which are incorporated as a co-regularizer to augment individual PLSA models over each data modality. We derive efficient iterative learning algorithms for coPLSA with symmetric KL, L2 and L1 divergences as co-regularizers, in each case the essential optimization problem affords simple numerical solutions that entail only matrix arithmetic ...
We propose a multi-wing harmonium model for mining multimedia data that extends and improves on earl...
Topic modeling is an actively developing field in the statistical analysis of texts [1]. A probabili...
Cross-modality retrieval encompasses retrieval tasks where the fetched items are of a different type...
We consider the over-fitting problem for multinomial probabilistic Latent Semantic Analysis (pLSA) i...
It is current state of knowledge that our neocortex consists of six layers [10]. We take this knowle...
In many Web applications, such as blog classification and newsgroup classification, labeled data are...
Part 2: Machine LearningInternational audiencePLSA(Probabilistic Latent Semantic Analysis) is a popu...
In reality, data objects often belong to several different categories simultaneously, which are sema...
We present a probabilistic framework for learning pairwise similarities between objects belonging to...
© 2017 IEEE. The core of existing cross-modal retrieval approaches is to close the gap between diffe...
In many problems in machine learning there exist relations between data collections from different m...
Probabilistic Latent Semantic Analysis (PLSA) is an effective technique for information re-trieval, ...
While many approaches exist in the literature to learn low-dimensional representations for data coll...
In this paper we propose a multi-task lin-ear classifier learning problem called D-SVM (Dictionary S...
Non-negative Matrix Factorization (NMF, [5]) and Probabilistic Latent Semantic Analysis (PLSA, [4]) ...
We propose a multi-wing harmonium model for mining multimedia data that extends and improves on earl...
Topic modeling is an actively developing field in the statistical analysis of texts [1]. A probabili...
Cross-modality retrieval encompasses retrieval tasks where the fetched items are of a different type...
We consider the over-fitting problem for multinomial probabilistic Latent Semantic Analysis (pLSA) i...
It is current state of knowledge that our neocortex consists of six layers [10]. We take this knowle...
In many Web applications, such as blog classification and newsgroup classification, labeled data are...
Part 2: Machine LearningInternational audiencePLSA(Probabilistic Latent Semantic Analysis) is a popu...
In reality, data objects often belong to several different categories simultaneously, which are sema...
We present a probabilistic framework for learning pairwise similarities between objects belonging to...
© 2017 IEEE. The core of existing cross-modal retrieval approaches is to close the gap between diffe...
In many problems in machine learning there exist relations between data collections from different m...
Probabilistic Latent Semantic Analysis (PLSA) is an effective technique for information re-trieval, ...
While many approaches exist in the literature to learn low-dimensional representations for data coll...
In this paper we propose a multi-task lin-ear classifier learning problem called D-SVM (Dictionary S...
Non-negative Matrix Factorization (NMF, [5]) and Probabilistic Latent Semantic Analysis (PLSA, [4]) ...
We propose a multi-wing harmonium model for mining multimedia data that extends and improves on earl...
Topic modeling is an actively developing field in the statistical analysis of texts [1]. A probabili...
Cross-modality retrieval encompasses retrieval tasks where the fetched items are of a different type...