An Associative Model of Word Selection in the Generation
of Search Queries
To generate a search query based on an end-user request, a database
searcher has to select appropriate search terms. These terms can
either be taken from the request, or they can be added by the
searcher. This selection process is simulated by an associative
lexical net; the nodes of the net are the terms used in 94
records of written requests to a psychological information
agency and the respective on-line searches. The weights connecting
the nodes are calculated from the co-occurrences of these terms
in the abstracts of the database PsycLIT. To simulate the term
selection process for a query, the nodes of all terms used in
the written request are activated, and one or more spreading
activation cycles are performed. The result of the simulation
is a ranking of the terms according to the activities of their
nodes. Simulations for all 94 records show a low mean activity
rank for the terms selected from the request; the mean activity
rank for new terms added by the searcher is lower than the mean
activity rank for those terms of the request that were not used
in the query.
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Home-page Reinhard Rapp