Selecting Task-Relevant Sources for Just-in-Time Retrieval
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David B. Leake, Larry Birnbaum, Cameron Marlow, and Hao Yang.
Proceedings of the AAAI-99
Workshop on Exploring Synergies of Knowledge Management and
Case-Based Reasoning. AAAI Press, Menlo Park, 1999. 5 pages.
Abstract
``Just-in-time'' information systems monitor their users' tasks,
anticipate task-based information needs, and proactively provide their
users with relevant information. The effectiveness of such systems
depends both on their capability to track user tasks and on their
ability to retrieve information that satisfies task-based needs. The
Watson system \cite{budzik-et-al98,budzik-hammond99} provides a framework for
monitoring user tasks and identifying relevant content areas, and uses
this information to generate focused queries for general-purpose
search engines and for specialized search engines integrated into the
system. The proliferation of specialized search engines and
information repositories on the Web provides a rich source of
additional information pre-focused for a wide range information needs,
potentially enabling just-in-time systems to exploit that focus by
querying the most relevant sources. However, putting this into
practice depends on having general scalable methods for selecting the
best sources to satisfy the user's needs. This paper describes early
research on augmenting Watson with a general-purpose capability for
automatic information source selection. It presents a source
selection method that has been integrated into Watson and discusses
general issues and research directions for task-relevant source
selection.
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