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    AuthorTitleYearJournal/ProceedingsReftypeDOI/URL
    Kim, S., Rim, H., Yook, D. & Lim, H. Effective methods for improving Naive Bayes text classifiers 2002   misc URL 
    BibTeX:
    @misc{kim2002naive,
      author = {S. Kim and H. Rim and D. Yook and H. Lim},
      title = {Effective methods for improving Naive Bayes text classifiers},
      year = {2002},
      url = {http://citeseer.ist.psu.edu/kim02effective.html}
    }
    
    Lewis, D.D. Naive (Bayes) at forty: The independence assumption in information retrieval. 1998 (1398)Proceedings of ECML-98, 10th European Conference on Machine Learning, pp. 4-15  inproceedings URL 
    BibTeX:
    @inproceedings{lewis1998naive,
      author = {David D. Lewis},
      title = {Naive (Bayes) at forty: The independence assumption in information retrieval.},
      booktitle = {Proceedings of ECML-98, 10th European Conference on Machine Learning},
      publisher = {Springer Verlag, Heidelberg, DE},
      year = {1998},
      number = {1398},
      pages = {4--15},
      url = {http://citeseer.ist.psu.edu/lewis98naive.html}
    }
    
    McCallum, A. & Nigam, K. A Comparison of Event Models for Naive Bayes Text Classification 1998 Learning for Text Categorization: Papers from the 1998 AAAI Workshop , pp. 41-48  inproceedings URL 
    BibTeX:
    @inproceedings{mccallum1998naive,
      author = {Andrew McCallum and Kamal Nigam},
      title = {A Comparison of Event Models for Naive Bayes Text Classification},
      booktitle = {Learning for Text Categorization: Papers from the 1998 AAAI Workshop },
      year = {1998},
      pages = {41--48},
      url = {http://www.kamalnigam.com/papers/multinomial-aaaiws98.pdf}
    }
    
    Metsis, V., Androutsopoulos, I. & Paliouras, G. Spam Filtering with Naive Bayes -- Which Naive Bayes? 2006   misc URL 
    BibTeX:
    @misc{metsis2006naive,
      author = {Vangelis Metsis and Ion Androutsopoulos and Georgios Paliouras},
      title = {Spam Filtering with Naive Bayes -- Which Naive Bayes?},
      year = {2006},
      url = {http://citeseer.ist.psu.edu/757874.html}
    }
    
    Rennie, J.D.M. Improving Multi-class Text Classification with Naive Bayes 2001 School: Massachusetts Institute of Technology  mastersthesis URL 
    Abstract: There are numerous text documents available in electronic form. More and more are becoming available every day. Such documents represent a massive amount of information that is easily accessible. Seeking value in this huge collection requires organization; much of the work of organizing documents can be automated through text classification. The accuracy and our understanding of such systems greatly influences their usefulness. In this paper, we seek 1) to advance the understanding of commonly used text classification techniques, and 2) through that understanding, improve the tools that are available for text classification. We begin by clarifying the assumptions made in the derivation of Naive Bayes, noting basic properties and proposing ways for its extension and improvement. Next, we investigate the quality of Naive Bayes parameter estimates and their impact on classification. Our analysis leads to a theorem which gives an explanation for the improvements that can be found in multiclass classification with Naive Bayes using Error-Correcting Output Codes. We use experimental evidence on two commonly-used data sets to exhibit an application of the theorem. Finally, we show fundamental flaws in a commonly-used feature selection algorithm and develop a statistics-based framework for text feature selection. Greater understanding of Naive Bayes and the properties of text allows us to make better use of it in text classification.
    BibTeX:
    @mastersthesis{rennie2001naive,
      author = {Jason D. M. Rennie},
      title = {Improving Multi-class Text Classification with Naive Bayes},
      school = {Massachusetts Institute of Technology},
      year = {2001},
      url = {http://people.csail.mit.edu/~jrennie/papers/sm-thesis.pdf}
    }
    

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