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E-raamat: Pattern Detection and Discovery: ESF Exploratory Workshop, London, UK, September 16-19, 2002.

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  • Formaat: PDF+DRM
  • Sari: Lecture Notes in Computer Science 2447
  • Ilmumisaeg: 02-Aug-2003
  • Kirjastus: Springer-Verlag Berlin and Heidelberg GmbH & Co. K
  • Keel: eng
  • ISBN-13: 9783540457282
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  • Formaat: PDF+DRM
  • Sari: Lecture Notes in Computer Science 2447
  • Ilmumisaeg: 02-Aug-2003
  • Kirjastus: Springer-Verlag Berlin and Heidelberg GmbH & Co. K
  • Keel: eng
  • ISBN-13: 9783540457282

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The collation of large electronic databases of scienti c and commercial infor- tion has led to a dramatic growth of interest in methods for discovering struc- res in such databases. These methods often go under the general name of data mining. One important subdiscipline within data mining is concerned with the identi cation and detection of anomalous, interesting, unusual, or valuable - cords or groups of records, which we call patterns. Familiar examples are the detection of fraud in credit-card transactions, of particular coincident purchases in supermarket transactions, of important nucleotide sequences in gene sequence analysis, and of characteristic traces in EEG records. Tools for the detection of such patterns have been developed within the data mining community, but also within other research communities, typically without an awareness that the - sic problem was common to many disciplines. This is not unreasonable: each of these disciplines has a large literature of its own, and a literature which is growing rapidly. Keeping up with any one of these is di cult enough, let alone keeping up with others as well, which may in any case be couched in an - familiar technical language. But, of course, this means that opportunities are being lost, discoveries relating to the common problem made in one area are not transferred to the other area, and breakthroughs and problem solutions are being rediscovered, or not discovered for a long time, meaning that e ort is being wasted and opportunities may be lost.

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Springer Book Archives
General Issues
Pattern Detection and Discovery
1(12)
David J. Hand
Detecting Interesting Instances
13(11)
Katharina Morik
Complex Data: Mining Using Patterns
24(12)
Arno Siebes
Zbyszek Struzik
Determining Hit Rate in Pattern Search
36(13)
Richard J. Bolton
David J. Hand
Niall M. Adams
An Unsupervised Algorithm for Segmenting Categorical Timeseries into Episodes
49(14)
Paul Cohen
Brent Heeringa
Niall Adams
If You Can't See the Pattern, Is It There?
63(14)
Antony Unwin
Association Rules
Dataset Filtering Techniques in Constraint-Based Frequent Pattern Mining
77(15)
Marek Wojciechowski
Maciej Zakrzewicz
Concise Representations of Association Rules
92(18)
Marzena Kryszkiewicz
Constraint-Based Discovery and Inductive Queries: Application to Association Rule Mining
110(15)
Baptiste Jeudy
Jean-Francois Boulicaut
Relational Association Rules: Getting WARMeR
125(15)
Bart Goethals
Jan Van den Bussche
Text and Web Mining
Mining Text Data: Special Features and Patterns
140(14)
M. Delgado
M.J. Martin-Bautista
D. Sanchez
M.A. Vila
Modelling and Incorporating Background Knowledge in the Web Mining Process
154(16)
Myra Spiliopoulou
Carsten Pohle
Modeling Information in Textual Data Combining Labeled and Unlabeled Data
170(10)
Dunja Mladenic
Discovery of Frequent Word Sequences in Text
180(10)
Helena Ahonen-Myka
Applications
Pattern Detection and Discovery: The Case of Music Data Mining
190(9)
Pierre- Yves Rolland
Jean-Gabriel Ganascia
Discovery of Core Episodes from Sequences
199(15)
Frank Hoppner
Patterns of Dependencies in Dynamic Multivariate Data
214(13)
Ursula Gather
Roland Fried
Michael Imhoff
Claudia Becker
Author Index 227