permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. Topics identification (TI) is the process that consists in determining the main themes present in natural language documents. The current TI modeling paradigm aims at acquiring semantic information from statistic properties of large text datasets. We investigate the mental mechanisms responsible for the identification of topics in a single document given existing knowledge. Our main hypothesis is that topics are the result of accumulated neural activation of loosely organized information stored in long-term memory (LTM). We experimentally tested our hypothesis with a computational model that simulates LTM activation. The mod...
The abundance of data in the information age poses an immense challenge for us: how to perform large...
The acquisition and maintenance of new language information, such as picking up new words, is a crit...
A large document collection that builds up over time usually contains a number of different ...
With the rapid proliferation of social networking sites (SNS), automatic topic extraction from vario...
It is estimated that the world’s data will increase to roughly 160 billion terabytes by 2025, with m...
Topic models and all their variants analyse text by learning meaningful representations through word...
Topic models are unsupervised techniques that extract likely topics from text corpora, by creating p...
The development of the Web has, among its other direct influences, provided a vast amount of data to...
Topic modeling techniques have the benefits of modeling words and documents uniformly under a probab...
Resonance is generally used as a metaphor to describe the manner how the information from different ...
A key issue in cognitive science concerns the fundamental psychological processes that underlie the ...
We provide a brief, non-technical introduction to the text mining methodology known as topic modelin...
Artificial intelligence (AI) assisted human brain research is a dynamic interdisciplinary field with...
Topic modeling algorithms, such as LDA, find topics, hidden structures, in document corpora in an un...
This paper assesses topic coherence and human topic ranking of uncovered latent topics from scientif...
The abundance of data in the information age poses an immense challenge for us: how to perform large...
The acquisition and maintenance of new language information, such as picking up new words, is a crit...
A large document collection that builds up over time usually contains a number of different ...
With the rapid proliferation of social networking sites (SNS), automatic topic extraction from vario...
It is estimated that the world’s data will increase to roughly 160 billion terabytes by 2025, with m...
Topic models and all their variants analyse text by learning meaningful representations through word...
Topic models are unsupervised techniques that extract likely topics from text corpora, by creating p...
The development of the Web has, among its other direct influences, provided a vast amount of data to...
Topic modeling techniques have the benefits of modeling words and documents uniformly under a probab...
Resonance is generally used as a metaphor to describe the manner how the information from different ...
A key issue in cognitive science concerns the fundamental psychological processes that underlie the ...
We provide a brief, non-technical introduction to the text mining methodology known as topic modelin...
Artificial intelligence (AI) assisted human brain research is a dynamic interdisciplinary field with...
Topic modeling algorithms, such as LDA, find topics, hidden structures, in document corpora in an un...
This paper assesses topic coherence and human topic ranking of uncovered latent topics from scientif...
The abundance of data in the information age poses an immense challenge for us: how to perform large...
The acquisition and maintenance of new language information, such as picking up new words, is a crit...
A large document collection that builds up over time usually contains a number of different ...