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	<title>Comments on: Personalization: the TiVo case</title>
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	<link>http://www.daniel-lemire.com/blog/archives/2005/03/13/personalization-the-tivo-case/</link>
	<description>Daniel Lemire's blog is about life in academia, research in Computer Science, wondering how we can reconcile fast databases and algorithms with the informal and asemantic nature of the world around us. It is broadcasted from  Montreal (Canada).</description>
	<pubDate>Mon, 06 Oct 2008 15:42:22 +0000</pubDate>
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		<title>By: IFTF's Future Now</title>
		<link>http://www.daniel-lemire.com/blog/archives/2005/03/13/personalization-the-tivo-case/#comment-2129</link>
		<dc:creator>IFTF's Future Now</dc:creator>
		<pubDate>Tue, 22 Mar 2005 00:58:07 +0000</pubDate>
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&lt;trackback /&gt;&lt;strong&gt;Tivo Collaborative Filtering&lt;/strong&gt;
 When I first got a Tivo, I wondered about the details of how their collaborative filtering (recommendation) system worked. Not that it always did a good job, but I was interested in how much work was done to link behavior to recommendation. Could have...</description>
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<trackback /><strong>Tivo Collaborative Filtering</strong><br />
 When I first got a Tivo, I wondered about the details of how their collaborative filtering (recommendation) system worked. Not that it always did a good job, but I was interested in how much work was done to link behavior to recommendation. Could have&#8230;</p>
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		<title>By: Many-to-Many</title>
		<link>http://www.daniel-lemire.com/blog/archives/2005/03/13/personalization-the-tivo-case/#comment-1946</link>
		<dc:creator>Many-to-Many</dc:creator>
		<pubDate>Mon, 14 Mar 2005 20:55:38 +0000</pubDate>
		<guid isPermaLink="false">http://www.daniel-lemire.com/blog/archives/2005/03/13/personalization-the-tivo-case/#comment-1946</guid>
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&lt;trackback /&gt;&lt;strong&gt;Web personalization, and how TiVo learns&lt;/strong&gt;
Michael Pazzani gave a course on Web personalization at UC Irvine this winter, and has made allsome of his slides available online. Topics covered include user profiling and collaborative filtering. Recommender systems such as Amazon and TiVo are exami...</description>
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<trackback /><strong>Web personalization, and how TiVo learns</strong><br />
Michael Pazzani gave a course on Web personalization at UC Irvine this winter, and has made allsome of his slides available online. Topics covered include user profiling and collaborative filtering. Recommender systems such as Amazon and TiVo are exami&#8230;</p>
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