Author List: Jiang, Zhengrui; Mookerjee, Vijay S.; Sarkar, Sumit;
Information Systems Research, 2005, Volume 16, Issue 2, Page 131-148.
We consider a new variety of sequential information gathering problems that are applicable for Web-based applications in which data provided as input may be distorted by the system user, such as an applicant for a credit card. We propose two methods to compensate for input distortion. The first method, termed knowledge base modification, considers redesigning the knowledge base of an expert system to best account for distortion in the input provided by the user. The second method, termed input modification, modifies the input directly to account for distortion and uses the modified input in the existing (unmodified) knowledge base of the system. These methods are compared with an approach where input noise is ignored. Experimental results indicate that both types of modification substantially improve the accuracy of recommendations, with knowledge base modification outperforming input modification in most cases. Knowledge base modification is, however, more computationally intensive than input modification. Therefore, when computational resources are adequate, the knowledge base modification approach is preferred; when such resources are very limited, input modification may be the only viable alternative.
Keywords: expert systems; input distortion; noise handling; sequential information gathering
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#194 0.375 use habit input automatic features modification different cognition rules account continuing underlying genre emotion way light triggers conscious triggered habitual
#129 0.211 expert systems knowledge knowledge-based human intelligent experts paper problem acquisition base used expertise intelligence domain inductive rules machine artificial task
#97 0.116 set approach algorithm optimal used develop results use simulation experiments algorithms demonstrate proposed optimization present analytical distribution selection number existing
#0 0.100 information types different type sources analysis develop used behavior specific conditions consider improve using alternative understanding data available main target
#86 0.078 methods information systems approach using method requirements used use developed effective develop determining research determine assessment useful series critical existing