Record Details

Self-learning improvement by means of cloud computing

ICESBA

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Authentication Code dc
 
Title Statement Self-learning improvement by means of cloud computing
 
Added Entry - Uncontrolled Name Gicu Călin DEAC; Ingineria si Managementul Sistemelor Tehnologice,Univ. Politehnica, Bucuresti
Crina Narcisa Deac; Politehnica University of Bucharest
Costel Emil Cotet; <span> </span><span>IMST</span><span> Faculty. Politehnica University of Bucharest.</span>
Mihalache GHINEA; IMST Faculty. Politehnica University of Bucharest.
 
Uncontrolled Index Term self-learning, NLP, machine learning
I29
 
Summary, etc. This paper describes some results of authors' research in machine reading at scale as a support for self-learning, which combines the challenges of document retrieval (finding the relevant articles) with that of machine comprehension of text (identifying the answer spans from those articles). Our approach combines a search component based on bigram hashing and TF-IDF (term frequency–inverse document frequency) matching with a multi-layer recurrent neural network model trained to detect answers in Wikipedia paragraphs.
 
Publication, Distribution, Etc. ICESBA2017: International Conference on Economic Sciences and Business Administration
2017-10-19 10:05:21
 
Index Term - Genre/Form Peer-reviewed Paper
 
Electronic Location and Access application/pdf
http://icesba.eu/ocs/index.php/ICESBA2017/icesba2017/paper/view/176
 
Data Source Entry ICESBA2017: International Conference on Economic Sciences and Business Administration; International Conference on Economic Sciences and Business Administration
 
Language Note en
 
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