Difference between revisions of "Event:NTDM 2008"

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|Title=PAKDD08 workshop on Noise Tolerant Mining in Databases
 
|Title=PAKDD08 workshop on Noise Tolerant Mining in Databases
 
|Type=Workshop
 
|Type=Workshop
|Field=Data mining
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|Official Website=http://www.ntu.edu.sg/home/asvivek/ntmd
|Homepage=www.ntu.edu.sg/home/asvivek/ntmd
 
 
|City=Osaka
 
|City=Osaka
|Country=Japan
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|Country=Country:JP
|Submission deadline=Jan 6, 2008
 
 
|wikicfpId=2061
 
|wikicfpId=2061
 
|pageCreator=127.0.0.1
 
|pageCreator=127.0.0.1
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|Start Date=May 20, 2008
 
|Start Date=May 20, 2008
 
|End Date=May 23, 2008
 
|End Date=May 23, 2008
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|Academic Field=Data Mining
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|Event Status=as scheduled
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|Event Mode=on site
 
}}
 
}}
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{{Event Deadline
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|Submission Deadline=Jan 6, 2008
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}}
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{{S Event}}
  
 
<pre>
 
<pre>

Latest revision as of 15:27, 19 October 2022

Deadlines
2008-01-06
6
Jan
2008
Submission
Venue

Osaka, Japan

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Transactional data is ubiquituous in many real world applications. While market-basket, protein-taxa, gene expression, etc. naturally present themselves as transactional data, others like streaming/time-series data, text data, protein-protein interactions, etc. can also be modeled as transactional data. Transactional databases are typically large and have high dimensionality, and may also be affected by noise. Noise may arise due to missing values, erroneous readings or uncertainty in data. Depending on the domain, the noise may be either known or unknown (both in distribution and in amount).

In this workshop, we focus on common mining problems: Frequent itemset mining, Association Rule Mining, Subspace clustering and Co-clustering, on transactional databases in the presence of noise. In such problems, noise can lead to incorrect mining results and also degrade mining performance. So it is critical to develop noise aware mining techniques which are robust and efficient. Besides developing innovative techniques, it is also important to validate them using statistical/domain knowledge or by real-world case studies. 
	

This CfP was obtained from WikiCFP

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