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Enabling scalable online personalization on the Web
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Source Electronic Commerce archive
Proceedings of the 2nd ACM conference on Electronic commerce table of contents
Minneapolis, Minnesota, United States
Pages: 185 - 196  
Year of Publication: 2000
ISBN:1-58113-272-7
Authors
Debra VanderMeer  Georgia Institute of Technology and Chutney Technologies, Atlanta, GA
Kaushik Dutta  Georgia Institute of Technology, Atlanta, GA
Anindya Datta  Georgia Institute of Technology and Chutney Technologies, Atlanta, GA
Krithi Ramamritham
Shamkant B. Navanthe
Sponsor
SIGEcom: ACM Special Interest Group on Electronic Commerce
Publisher
ACM  New York, NY, USA
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Downloads (6 Weeks): 2,   Downloads (12 Months): 24,   Citation Count: 7
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REFERENCES

Note: OCR errors may be found in this Reference List extracted from the full text article. ACM has opted to expose the complete List rather than only correct and linked references.

 
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Accrue. Accrue technologies. www.accrue.com, 1999.
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Andromedia. Likeminds. www.andromedia.com/products/likeminds, 1999.
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J.S. Breese, D. Heckerman, and C. Kadie. Empirical analysis of predictive algorithms for collaborative ~ltering. In Proceedings of the Fourteenth Conference on Uncertainty in Arti~cial Intelligence, pages 43{52, July 1998.
 
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P.K. Chan. A non-invasive approach to building web user pro~les. In Proceedings of WEBKDD'99: Workshop on Web Usage Analysis and User Pro~ling, 1999. http://www.acm.org/sigs/sigkdd/proceedings/webkdd99 /toconline.htm.
 
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E. Cohen, B. Krishnamurthy, and J. Murphy. E~cient algorithms for predicting requests to web servers. In Proceedings of the 18th Conference on Computer Communications, pages 284{93, March 1999.
 
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R. Cooley, B. Mobasher, and J. Srivastava. Data preparation for mining world wide web browsing patterns. Knowledge and Information Systems, 1(1):5{32, 1999.
 
11
Foveon Corporation. Foveon system. http://www.foveon.com.
 
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A. Datta, K. Dutta, D. VanderMeer, K. Ramamritham, and S. Navathe. Chutney technical report: Enabling scalable online personalization on the web. Technical report, Chutney Technologies, 2000.
 
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Net Perceptions. Net perceptions recommendation engine. www.netperceptions.com, 1999.
 
20
K. Perine. Ftc backs its online privacy report. In The Standard, May 25, 2000. Available via http://www.thestandard.com/article/display /0,1151,15439,00.html.
 
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Personify. Personify technologies. www.personify.com, 1999.
 
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F.F. Reichheld and W.E. Sasser. Zero defections: quality comes to services. Harvard Business Review, 68:105{7, September-October 1990.
 
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M. Spiliopoulou, L.S. Faulstich, and K. Winkler. A data miner analyzing the navigaitional behavior of web users. In International Conference ofACAI'99: Workshop on Machine Learning in User Modelling, 1999.
 
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Broadvision Technologies. Broadvision. www.broadvision.com, 1999.
 
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Engage Technologies. Engage e-commerce product suite. www.engage.com, 1999.
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Collaborative Colleagues:
Debra VanderMeer: colleagues
Kaushik Dutta: colleagues
Anindya Datta: colleagues
Krithi Ramamritham: colleagues
Shamkant B. Navanthe: colleagues