Abstract—Given a topic and its top-k most relevant words generated by a topic model, how can we tell whether it is a low-quality or a high-quality topic? Topic models provide a low-dimensional representation of large document corpora, and drive many important applications such as summariza-tion, document segmentation, word-sense disambiguation, etc. Evaluation of topic models is an important issue; since low-quality topics potentially degrade the performance of these applications. In this paper, we develop a graph mining and machine learning approach for the external evaluation of topic models. Based on the graph-centric features we extract from the projection of topic words on the Wikipedia page-links graph, we learn models that can predic...
Topic Modelling has been successfully applied in many text mining applications such as natural langu...
The goal of topic detection or topic modelling is to uncover the hidden topics in a large corpus. It...
It is well known that supervised text classification methods need to learn from many labeled exampl...
Abstract—Given a topic and its top-k most relevant words generated by a topic model, how can we tell...
Topic models can learn topics that are highly interpretable, semantically-coherent and can be used s...
In this research, we extend probabilistic topic models, originally developed for a textual corpus an...
Large organizations often face the critical challenge of sharing information and maintaining connect...
Large organizations often face the critical challenge of sharing information and maintaining connect...
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...
Topic modeling is a popular technique for exploring large document collections. It has proven useful...
Topic modeling algorithms, such as LDA, find topics, hidden structures, in document corpora in an un...
Topic models are widely used unsupervised models capable of learning topics – weighted lists of word...
As large-scale digital text collections become abundant, the necessity of automatically summarizing ...
Topic Modelling has been successfully applied in many text mining applications such as natural langu...
Topic Modelling has been successfully applied in many text mining applications such as natural langu...
The goal of topic detection or topic modelling is to uncover the hidden topics in a large corpus. It...
It is well known that supervised text classification methods need to learn from many labeled exampl...
Abstract—Given a topic and its top-k most relevant words generated by a topic model, how can we tell...
Topic models can learn topics that are highly interpretable, semantically-coherent and can be used s...
In this research, we extend probabilistic topic models, originally developed for a textual corpus an...
Large organizations often face the critical challenge of sharing information and maintaining connect...
Large organizations often face the critical challenge of sharing information and maintaining connect...
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...
Topic modeling is a popular technique for exploring large document collections. It has proven useful...
Topic modeling algorithms, such as LDA, find topics, hidden structures, in document corpora in an un...
Topic models are widely used unsupervised models capable of learning topics – weighted lists of word...
As large-scale digital text collections become abundant, the necessity of automatically summarizing ...
Topic Modelling has been successfully applied in many text mining applications such as natural langu...
Topic Modelling has been successfully applied in many text mining applications such as natural langu...
The goal of topic detection or topic modelling is to uncover the hidden topics in a large corpus. It...
It is well known that supervised text classification methods need to learn from many labeled exampl...