Recent work suggests knowledge sources can be added into the topic modeling process to label topics and improve topic discovery. The knowledge sources typically consist of a collection of human-constructed articles, each describing a topic (article-topic) for an entire domain. However, these semisupervised topic models assume a corpus to contain topics on only a subset of a domain. Therefore, during inference, the model must consider which article-topics were theoretically used to generate the corpus. Since the knowledge sources tend to be quite large, the many article-topics considered slow down the inference process. The increase in execution time is significant, with knowledge source input greater than 103 becoming unfeasible for use in ...
In publication driven domains such as the scientic community the availability of topic information i...
Topic modeling is an unsupervised method for revealing the hidden semantic structure of a corpus. It...
Topic modeling is a popular technique for exploring large document collections. It has proven useful...
Abstract—Topic modeling has become a widely used tool for document management due to its superior pe...
Topic indexing is the task of identifying the main topics covered by a document. These are useful fo...
© Springer Nature Singapore Pte Ltd. 2018. A topic model is an unsupervised model to automatically d...
Topic models can learn topics that are highly interpretable, semantically-coherent and can be used s...
The goal of topic detection or topic modelling is to uncover the hidden topics in a large corpus. It...
Topic models are widely used unsupervised models capable of learning topics – weighted lists of word...
Probabilistic topic models could be used to extract low-dimension topics from document collections. ...
Topic modeling algorithms, such as LDA, find topics, hidden structures, in document corpora in an un...
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...
It is estimated that the world’s data will increase to roughly 160 billion terabytes by 2025, with m...
It is estimated that the world’s data will increase to roughly 160 billion terabytes by 2025, with m...
In publication driven domains such as the scientic community the availability of topic information i...
Topic modeling is an unsupervised method for revealing the hidden semantic structure of a corpus. It...
Topic modeling is a popular technique for exploring large document collections. It has proven useful...
Abstract—Topic modeling has become a widely used tool for document management due to its superior pe...
Topic indexing is the task of identifying the main topics covered by a document. These are useful fo...
© Springer Nature Singapore Pte Ltd. 2018. A topic model is an unsupervised model to automatically d...
Topic models can learn topics that are highly interpretable, semantically-coherent and can be used s...
The goal of topic detection or topic modelling is to uncover the hidden topics in a large corpus. It...
Topic models are widely used unsupervised models capable of learning topics – weighted lists of word...
Probabilistic topic models could be used to extract low-dimension topics from document collections. ...
Topic modeling algorithms, such as LDA, find topics, hidden structures, in document corpora in an un...
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...
It is estimated that the world’s data will increase to roughly 160 billion terabytes by 2025, with m...
It is estimated that the world’s data will increase to roughly 160 billion terabytes by 2025, with m...
In publication driven domains such as the scientic community the availability of topic information i...
Topic modeling is an unsupervised method for revealing the hidden semantic structure of a corpus. It...
Topic modeling is a popular technique for exploring large document collections. It has proven useful...