Probabilistic topic models have become one of the most widespread machine learning techniques in textual analysis. Topic discovering is an unsupervised process that does not guarantee the interpretability of its output. Hence, the automatic evaluation of topic coherence has attracted the interest of many researchers over the last decade, and it is an open research area. The present article offers a new quality evaluation method based on Statistically Validated Networks (SVNs). The proposed probabilistic approach consists of representing each topic as a weighted network of its most probable words. The presence of a link between each pair of words is assessed by statistically validating their co-occurrence in sentences against the n...
Managing large collections of documents is an important problem for many areas of science, industry,...
In recent years, topic modeling has become an established method in the analysis of text corpora, wi...
Topic modeling is a popular unsupervised technique that is used to discover the latent thematic stru...
Probabilistic topic models have become one of the most widespread machine learning technique for tex...
Probabilistic topic models have become one of the most widespread machine learning technique for tex...
Probabilistic topic models have become one of the most widespread machine learning technique for te...
Probabilistic topic models have become one of the most widespread machine learning technique for te...
Topic models arise from the need of understanding and exploring large text document collections and...
Topic models arise from the need of understanding and exploring large text document collections and...
Probabilistic topic models are machine learning tools for processing and understanding large text d...
Probabilistic topic models are machine learning tools for processing and understanding large text d...
halle.de Quantifying the coherence of a set of statements is a long standing problem with many poten...
Topic modeling is an important tool in social media anal-ysis, allowing researchers to quickly under...
There is a rising need for automated analysis of news text, and topic models have proven to be usefu...
Topic modelling approaches help scholars to examine the topics discussed in a corpus. Due to the po...
Managing large collections of documents is an important problem for many areas of science, industry,...
In recent years, topic modeling has become an established method in the analysis of text corpora, wi...
Topic modeling is a popular unsupervised technique that is used to discover the latent thematic stru...
Probabilistic topic models have become one of the most widespread machine learning technique for tex...
Probabilistic topic models have become one of the most widespread machine learning technique for tex...
Probabilistic topic models have become one of the most widespread machine learning technique for te...
Probabilistic topic models have become one of the most widespread machine learning technique for te...
Topic models arise from the need of understanding and exploring large text document collections and...
Topic models arise from the need of understanding and exploring large text document collections and...
Probabilistic topic models are machine learning tools for processing and understanding large text d...
Probabilistic topic models are machine learning tools for processing and understanding large text d...
halle.de Quantifying the coherence of a set of statements is a long standing problem with many poten...
Topic modeling is an important tool in social media anal-ysis, allowing researchers to quickly under...
There is a rising need for automated analysis of news text, and topic models have proven to be usefu...
Topic modelling approaches help scholars to examine the topics discussed in a corpus. Due to the po...
Managing large collections of documents is an important problem for many areas of science, industry,...
In recent years, topic modeling has become an established method in the analysis of text corpora, wi...
Topic modeling is a popular unsupervised technique that is used to discover the latent thematic stru...