publication . Conference object . Preprint . 2015

document classification using distributed machine learning

Aydin, Galip; Hallac, Ibrahim Riza;
Open Access
  • Published: 19 Apr 2015
  • Publisher: Institute of Research Engineers and Doctors
Abstract
In this paper, we investigate the performance and success rates of Na\"ive Bayes Classification Algorithm for automatic classification of Turkish news into predetermined categories like economy, life, health etc. We use Apache Big Data technologies such as Hadoop, HDFS, Spark and Mahout, and apply these distributed technologies to Machine Learning.
Subjects
ACM Computing Classification System: InformationSystems_MISCELLANEOUS
free text keywords: Spark (mathematics), Document classification, computer.software_genre, computer, Big data, business.industry, business, Turkish, language.human_language, language, Artificial intelligence, Information retrieval, Computer science, Machine learning, Bayes' theorem, Computer Science - Information Retrieval, Computer Science - Distributed, Parallel, and Cluster Computing

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publication . Conference object . Preprint . 2015

document classification using distributed machine learning

Aydin, Galip; Hallac, Ibrahim Riza;