
arXiv: cs/0205022
Information personalization is fertile ground for application of AI techniques. In this article I relate personalization to the ability to capture partial information in an information-seeking interaction. The specific focus is on personalizing interactions at web sites. Using ideas from partial evaluation and explanation-based generalization, I present a modeling methodology for reasoning about personalization. This approach helps identify seven tiers of `personable traits' in web sites.
FOS: Computer and information sciences, H.3.5, Artificial Intelligence (cs.AI), H.4.2, Computer Science - Artificial Intelligence, I.2.6, H.5.4, K.8, H.3.5; H.4.2; H.5.4; I.2.6; K.8, Information Retrieval (cs.IR), Computer Science - Information Retrieval
FOS: Computer and information sciences, H.3.5, Artificial Intelligence (cs.AI), H.4.2, Computer Science - Artificial Intelligence, I.2.6, H.5.4, K.8, H.3.5; H.4.2; H.5.4; I.2.6; K.8, Information Retrieval (cs.IR), Computer Science - Information Retrieval
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