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タグ: document-mining [48 articles]

Recent papers classified by the tag document-mining.
  • Statistical relational learning for document mining
    (2003)
  • Recognizing text genres with simple metrics using discriminant analysis
    (1994), pp. 1071-1075.
    by Jussi Karlgren, Douglass Cutting
  • Categorising Texts by Using a Three-Level
    by Functional S Description
  • Text genre detection using common word frequencies
    (2000), pp. 808-814.
  • Exploring the use of linguistic features in domain and genre classification
    (1999), pp. 142-149.
    by Maria Wolters, Mathias Kirsten
  • Choosing document structure weights
    Information Processing & Management, Vol. 41, No. 2. (March 2005), pp. 243-264.
    by Andrew Trotman
    posted to document-mining by magnusenger on 2005-02-06 14:55:13 as ** along with 2 groups DocSci OpenArchive
  • Text genre classification with genre-revealing and subject-revealing features
    (2002), pp. 145-150.
    by Yong-Bae Lee, Sung H Myaeng
  • Automatic text categorization in terms of genre and author
    Comput. Linguist., Vol. 26, No. 4. (December 2000), pp. 471-495.
    by Efstathios Stamatatos, George Kokkinakis, Nikos Fakotakis
  • Using the patent co-citation approach to establish a new patent classification system
    Information Processing & Management, Vol. 41, No. 2. (March 2005), pp. 313-330.
    by Kuei-Kuei Lai, Shiao-Jun Wu
  • Automatic topics discovery from hyperlinked documents
    Information Processing and Management, Vol. 40, No. 2. (March 2004), pp. 239-255.
    by KJ Wu, MC Chen, Y Sun
  • Automatic Detection of Text Genre
    (1997), pp. 32-38.
    by Brett Kessler, Geoffrey Nunberg, Hinrich Schütze
    edited by Philip R Cohen, Wolfgang Wahlster
  • Neural Network Based Document Clustering Using WordNet Ontologies
    Int. J. Hybrid Intell. Syst., Vol. 1, No. 3,4. (2004), pp. 127-142.
    by Chihli Hung, Stefan Wermter
    posted to clustering document-mining text-mining by karipuf on 2007-05-03 06:55:53 as **
  • Projections for efficient document clustering
    (1997)
    posted to document-mining text-mining by karipuf on 2007-04-16 09:01:34 as ** along with 2 people derek jelsas
  • notes Text Classification using String Kernels
    (2000), pp. 563-569.
    by Huma Lodhi, John S Taylor, Nello Cristianini, Christopher JCH Watkins
  • Machine learning in automated text categorization
    ACM Comput. Surv., Vol. 34, No. 1. (March 2002), pp. 1-47.
    by Fabrizio Sebastiani
  • Mining massive document collections by the WEBSOM method
    Inf. Sci., Vol. 163, No. 1-3. (2004), pp. 135-156.
    by Krista Lagus, Samuel Kaski, Teuvo Kohonen
  • Finding advertising keywords on web pages
    (2006), pp. 213-222.
    by Wen-Tau Yih, Joshua Goodman, Vitor R Carvalho
  • Maximal Association Rules: A Tool for Mining Associations in Text
    Journal of Intelligent Information Systems, Vol. 25, No. 3. (November 2005), pp. 333-345.
    by Amihood Amir, Yonatan Aumann, Ronen Feldman, Moshe Fresko
  • Visualizing document space by force-directed dynamic layout
    Visual Languages, 1997. Proceedings. 1997 IEEE Symposium on (1997), pp. 119-120.
    posted to document-mining text-mining visualization by karipuf on 2008-04-25 23:35:27 as **
  • A probabilistic justification for using tf×idf term weighting in information retrieval
    International Journal on Digital Libraries, Vol. 3, No. 2. (2000), pp. 131-139.
    by Djoerd Hiemstra
    posted to document document-mining text text-mining by karipuf on 2007-04-24 10:01:48 as **
  • Graphical relevance feedback: visual exploration in the document space
    Visual Languages, 2000. Proceedings. 2000 IEEE International Symposium on (2000), pp. 39-46.
    posted to document-mining text-mining visualization by karipuf on 2008-04-25 23:37:32 as **
  • An effective approach to document retrieval via utilizing WordNet and recognizing phrases
    (2004), pp. 266-272.
    by Shuang Liu, Fang Liu, Clement Yu, Weiyi Meng
  • Can Data Mining Techniques Ease The Semantic Tagging Burden
    by F Forno, L Farinetti, S Mehan
    posted to document-mining semantic-technologies semantic-web text-mining by karipuf on 2007-05-22 08:30:55 as **
  • A novel document retrieval method using the discrete wavelet transform
    ACM Trans. Inf. Syst., Vol. 23, No. 3. (July 2005), pp. 267-298.
    by Laurence AF Park, Kotagiri Ramamohanarao, Marimuthu Palaniswami
    posted to document-mining text-mining wavelet-transform by karipuf on 2007-04-29 16:36:25 as **
  • notes A Text Mining Approach on Automatic Generation of Web Directories and Hierarchies
    (2003)
    by Hsin-Chang Yang, Chung-Hong Lee
    posted to document-mining graph-theory som text-mining vector-space-method by karipuf on 2007-04-30 05:34:49 as **
  • Improving novelty detection for general topics using sentence level information patterns
    (2006), pp. 238-247.
    by Xiaoyan Li, Bruce W Croft
  • A text mining approach on automatic generation of web directories and hierarchies
    Expert Systems with Applications, Vol. 27, No. 4. (November 2004), pp. 645-663.
    by Hsin-Chang Yang, Chung-Hong Lee
    posted to document-mining som text-mining by karipuf on 2007-04-30 07:56:58 as **
  • Fast and accurate text classification via multiple linear discriminant projections
    The VLDB Journal, Vol. 12, No. 2. (August 2003), pp. 170-185.
    by Soumen Chakrabarti, Shourya Roy, Mahesh V Soundalgekar
  • notes Text Classification using String Kernels
    (2000), pp. 563-569.
    by Huma Lodhi, John S Taylor, Nello Cristianini, Christopher JCH Watkins
    posted to document-mining string-kernels text-mining by karipuf on 2007-04-23 09:57:26 as **
  • Word-level confidence estimation for machine translation using phrase-based translation models
    (2005), pp. 763-770.
    by Nicola Ueffing, Hermann Ney
  • Integrating contextual information to enhance SOM-based text document clustering
    Neural Netw., Vol. 15, No. 8-9. (2002), pp. 1099-1106.
    by Daniel Pullwitt
    posted to contextual document-mining text-mining by karipuf on 2007-04-29 16:37:41 as **
  • A comparison of document, sentence, and term event spaces
    (2006), pp. 601-608.
    by Catherine Blake
  • Text classification using string kernels
    J. Mach. Learn. Res., Vol. 2 (2002), pp. 419-444.
    by Huma Lodhi, Craig Saunders, John Shawe-Taylor, Nello Cristianini, Chris Watkins
    posted to document-mining string-kernels text-mining by karipuf on 2007-04-23 11:02:36 as **
  • An effective refinement strategy for KNN text classifier
    Expert Systems with Applications, Vol. 30, No. 2. (February 2006), pp. 290-298.
    by Songbo Tan
  • Text Retrieval Using Self-Organized Document Maps
    Neural Processing Letters, Vol. 15, No. 1. (16 February 2002), pp. 21-29.
    by Krista Lagus
    posted to document-mining som text-mining by karipuf on 2007-04-30 06:08:11 as ** along with 1 person zhengzhong
  • notes Measuring errors in text entry tasks: an application of the Levenshtein string distance statistic
    (2001), pp. 319-320.
    by William R Soukoreff, Scott I Mackenzie
  • A theory of term weighting based on exploratory data analysis
    (1998), pp. 11-19.
    by Warren R Greiff
    posted to document document-mining text text-mining by karipuf on 2007-04-24 09:16:28 as **
  • notes A Comparison of Machine Measures of Text Document Similarity with Human Judgments
    by Michael D Lee, Brandon Pincombe, Matthew Welsh
  • Circle Graphs: New Visualization Tools for Text-Mining
    (1999), pp. 277-282.
    by Yonatan Aumann, Ronen Feldman, Yaron B Yehuda, David Landau, Orly Lipshtat, Yonatan Schler
    posted to document-mining graph-theory text-mining by karipuf on 2007-04-30 06:02:46 as **
  • Contextual weighting for Support Vector Machines in literature mining: an application to gene versus protein name disambiguation
    BMC Bioinformatics, Vol. 6, No. 1. (2005)
    by Tapio Pahikkala, Filip Ginter, Jorma Boberg, Jouni Jarvinen, Tapio Salakoski
    posted to contextual document-mining text-mining by karipuf on 2007-04-29 17:20:35 as **
  • Term context models for information retrieval
    (2006), pp. 559-566.
    by Jeremy Pickens, Andrew Macfarlane
  • A comprehensive comparative study on term weighting schemes for text categorization with support vector machines
    (2005), pp. 1032-1033.
    by Man Lan, Chew-Lim Tan, Hwee-Boon Low, Sam-Yuan Sung
  • CRISOL: An Approach for Automatically Populating Semantic Web from Unstructured Text Collections
    Database and Expert Systems Applications (2004), pp. 243-252.
    by Roxana Danger, Rafael Berlanga, José Rui’z-Shulcloper
    posted to document-mining semantic-technologies semantic-web text-mining by karipuf on 2007-05-22 08:21:07 as **
  • Exploration of text collections with hierarchical feature maps
    (1997), pp. 186-195.
    by Dieter Merkl
    posted to document-mining som text-mining by karipuf on 2007-04-30 07:05:07 as **
  • A comparison of search term weighting: term relevance vs. inverse document frequency
    (1981), pp. 30-39.
    by Harry Wu, Gerard Salton
    posted to document document-mining text text-mining vector-space-model by karipuf on 2007-04-23 09:23:49 as **
  • notes A performance evaluation of similarity measures, document term weighting schemes and representations in a Boolean environment
    (1981), pp. 57-76.
    by Terry Noreault, Michael Mcgill, Matthew B Koll
    posted to document document-mining text text-mining by karipuf on 2007-04-24 09:11:59 as **
  • notes Word sequence kernels
    J. Mach. Learn. Res., Vol. 3 (2003), pp. 1059-1082.
    by Nicola Cancedda, Eric Gaussier, Cyril Goutte, Jean M Renders
    posted to document document-mining text text-mining vector-space-model by karipuf on 2007-04-23 09:38:42 as **
  • Linguistic feature extraction using independent component analysis
    Neural Networks, 2004. Proceedings. 2004 IEEE International Joint Conference on, Vol. 1 (2004)
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