
doi: 10.3390/a8030562
Currently deep learning has made great breakthroughs in visual and speech processing, mainly because it draws lessons from the hierarchical mode that brain deals with images and speech. In the field of NLP, a topic model is one of the important ways for modeling documents. Topic models are built on a generative model that clearly does not match the way humans write. In this paper, we propose Event Model, which is unsupervised and based on the language processing mechanism of neurolinguistics, to model documents. In Event Model, documents are descriptions of concrete or abstract events seen, heard, or sensed by people and words are objects in the events. Event Model has two stages: word learning and dimensionality reduction. Word learning is to learn semantics of words based on deep learning. Dimensionality reduction is the process that representing a document as a low dimensional vector by a linear mode that is completely different from topic models. Event Model achieves state-of-the-art results on document retrieval tasks.
neurolinguistics, Industrial engineering. Management engineering, Learning and adaptive systems in artificial intelligence, deep learning, QA75.5-76.95, T55.4-60.8, Event Model, document retrieval, Electronic computers. Computer science, Image processing (compression, reconstruction, etc.) in information and communication theory, topic model
neurolinguistics, Industrial engineering. Management engineering, Learning and adaptive systems in artificial intelligence, deep learning, QA75.5-76.95, T55.4-60.8, Event Model, document retrieval, Electronic computers. Computer science, Image processing (compression, reconstruction, etc.) in information and communication theory, topic model
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