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International Journal of Machine Learning and Computing
A Text Mining Approach to Analyze Public Media Science Coverage and Public Interest in Science
Artificial Intelligence
Information Systems and Management
Computer Science Applications
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title A Text Mining Approach to Analyze Public Media Science Coverage and Public Interest in Science
title_unstemmed A Text Mining Approach to Analyze Public Media Science Coverage and Public Interest in Science
title_full A Text Mining Approach to Analyze Public Media Science Coverage and Public Interest in Science
title_fullStr A Text Mining Approach to Analyze Public Media Science Coverage and Public Interest in Science
title_full_unstemmed A Text Mining Approach to Analyze Public Media Science Coverage and Public Interest in Science
title_short A Text Mining Approach to Analyze Public Media Science Coverage and Public Interest in Science
title_sort a text mining approach to analyze public media science coverage and public interest in science
topic Artificial Intelligence
Information Systems and Management
Computer Science Applications
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spelling Sun, Ying 2010-3700 EJournal Publishing Artificial Intelligence Information Systems and Management Computer Science Applications http://dx.doi.org/10.7763/ijmlc.2014.v6.461 A Text Mining Approach to Analyze Public Media Science Coverage and Public Interest in Science International Journal of Machine Learning and Computing
spellingShingle Sun, Ying, International Journal of Machine Learning and Computing, A Text Mining Approach to Analyze Public Media Science Coverage and Public Interest in Science, Artificial Intelligence, Information Systems and Management, Computer Science Applications
title A Text Mining Approach to Analyze Public Media Science Coverage and Public Interest in Science
title_full A Text Mining Approach to Analyze Public Media Science Coverage and Public Interest in Science
title_fullStr A Text Mining Approach to Analyze Public Media Science Coverage and Public Interest in Science
title_full_unstemmed A Text Mining Approach to Analyze Public Media Science Coverage and Public Interest in Science
title_short A Text Mining Approach to Analyze Public Media Science Coverage and Public Interest in Science
title_sort a text mining approach to analyze public media science coverage and public interest in science
title_unstemmed A Text Mining Approach to Analyze Public Media Science Coverage and Public Interest in Science
topic Artificial Intelligence, Information Systems and Management, Computer Science Applications
url http://dx.doi.org/10.7763/ijmlc.2014.v6.461