Multinomial distributions over words are frequently used to model topics in text collections. A common, major chal-lenge in applying all such topic models to any text mining problem is to label a multinomial topic model accurately so that a user can interpret the discovered topic. So far, such labels have been generated manually in a subjective way. In this paper, we propose probabilistic approaches to automat-ically labeling multinomial topic models in an objective way. We cast this labeling problem as an optimization problem involving minimizing Kullback-Leibler divergence between word distributions and maximizing mutual information be-tween a label and a topic model. Experiments with user study have been done on two text data sets with d...
Topic modeling is an actively developing field in the statistical analysis of texts [1]. A probabili...
Topic modeling is a technique used for discovering the ab-stract ‘topics ’ that occur in a collectio...
Abstract. Most nonparametric topic models such as Hierarchical Dirichlet Pro-cesses, when viewed as ...
distributions over words are frequently used to model topics in text collections. A common, major ch...
Probabilistic topic models, which aim to discover latent topics in text corpora define each document...
Machine learning approaches to multi-label document classification have to date largely relied on di...
In this paper, we address the problem of statistical learning for multitopic text categorization (MT...
Abstract — Text classification has become a critical step in big data analytics. For supervised mach...
Multi-label classification is a common supervised machine learning problem where each instance is as...
Multi-label text classification is an increasingly important field as large amounts of text data are...
Multi-label classification is a well-known supervised machine learning setting where each instance i...
Topic modeling has been widely utilized in the fields of information retrieval, text mining, text cl...
Probabilities topic models are active research area in text mining, machine learning, information re...
13 pagesTopic modeling is a type of text analysis that identifies clusters of co-occurring words, or...
Topic modeling is an unsupervised learning task that discovers the hidden topics in a ...
Topic modeling is an actively developing field in the statistical analysis of texts [1]. A probabili...
Topic modeling is a technique used for discovering the ab-stract ‘topics ’ that occur in a collectio...
Abstract. Most nonparametric topic models such as Hierarchical Dirichlet Pro-cesses, when viewed as ...
distributions over words are frequently used to model topics in text collections. A common, major ch...
Probabilistic topic models, which aim to discover latent topics in text corpora define each document...
Machine learning approaches to multi-label document classification have to date largely relied on di...
In this paper, we address the problem of statistical learning for multitopic text categorization (MT...
Abstract — Text classification has become a critical step in big data analytics. For supervised mach...
Multi-label classification is a common supervised machine learning problem where each instance is as...
Multi-label text classification is an increasingly important field as large amounts of text data are...
Multi-label classification is a well-known supervised machine learning setting where each instance i...
Topic modeling has been widely utilized in the fields of information retrieval, text mining, text cl...
Probabilities topic models are active research area in text mining, machine learning, information re...
13 pagesTopic modeling is a type of text analysis that identifies clusters of co-occurring words, or...
Topic modeling is an unsupervised learning task that discovers the hidden topics in a ...
Topic modeling is an actively developing field in the statistical analysis of texts [1]. A probabili...
Topic modeling is a technique used for discovering the ab-stract ‘topics ’ that occur in a collectio...
Abstract. Most nonparametric topic models such as Hierarchical Dirichlet Pro-cesses, when viewed as ...