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DMKD 2009 : Data Mining and Knowledge Discovery Special Issue on Global Modeling using Local Patterns | |||||||||||||||
Link: http://www.springer.com/cda/content/document/cda_downloaddocument/CFP_10618_20081111.pdf | |||||||||||||||
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Call For Papers | |||||||||||||||
Over the last decade, research in local pattern discovery has
developed rapidly, and a range of techniques is available for producing extensive collections of patterns. Because of the exhaustive nature of most techniques, the pattern collections provide a fairly complete picture of the information content of the database. However, in many cases this is where the process stops. The local patterns represent fragmented knowledge, and often it is not clear how the pieces of the puzzle can be combined into a global model, which is often the expected result of a data mining process. Consequently, the question of how to turn large collections of patterns into global models has received considerable attention. In data mining, the probably bestknown line of work that follows this approach are various approaches for associative classification, such as CBA and its successors. Similar problems also occur in propositionalization approaches to relational learning, where the goal is to discover propositional features that may be relevant for a propositional global model, or in related areas such as bioinformatics, text mining and computer vision, where the process of discovering complex features may be viewed as a local pattern discovery search. In general, all these approaches follow three different phases: 1. Local Pattern Discovery: finding a collection of local patterns in a given database that satisfy a set of inductive constraints, such as frequency or correlation with the target variable. 2. Pattern Subset Selection: selecting from the set of discovered patterns a small but informative subset of patterns that shows little redundancy. 3. Global Modeling: turning the set of selected patterns into an actionable global model by combining patterns effectively and dealing with potential conflicts between the patterns found. While each of these phases has been studied well in isolation, their dependencies are not yet well understood. Research areas that are of interest to this special issue include: * Associative Classification * Combination Strategies * Compression-based Pattern Selection * Constraint-based Pattern Set Mining * Efficient Pattern Set Discovery * Ensembles of Patterns * Feature Construction and Selection * Generalilty of Local Pattern Constraints * Global Modeling with Patterns * Iterative Local Pattern Discovery * KDD Process-models for Building Global Models from Local Patterns * Metrics for Pattern Set Selection * Pattern Ordering * Patterns and Information Theory * Pattern Set Selection * Pattern Teams * Propagation of Global Modeling Constraints to Local Pattern Discovery * Propositionalisation * Quality Measures for Pattern Sets * Resolution of Conflicting Predictions * Subgroup Discovery The full text of the call for papers can be found at: http://www.springer.com/cda/content/document/cda_downloaddocument/CFP_10618_20081111.pdf You can also reach this page from the DMKD journal site of Springer (http://www.springer.com/computer/database+management+%26+information+retrieval/journal/10618, click on "Call for Papers - Special Issue on ..."). Please don't hesitate to contact us for any further questions. Kind regards, Arno Knobbe, Johannes Fuernkranz Guest editors special issue |
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