Punjabi Documents Clustering System

@article{Sharma2013PunjabiDC,
  title={Punjabi Documents Clustering System},
  author={Saurabh Sharma and Vishal Gupta},
  journal={Journal of Emerging Technologies in Web Intelligence},
  year={2013},
  volume={5},
  pages={171-187}
}
Text document clustering inherits its qualities from Natural Languages Processing, Machine Learning and Information Retrieval. For unsupervised document organization, automatic topic extraction and fast information filtering and accuracy in retrieval, this is an effective method. Many clustering algorithms are available for unsupervised document organization and its retrieval thereof. The documents for text clustering are merely considered as an assortment of words in traditional approaches to… 

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