Preference-based Search using Example-Critiquing with Suggestions

@article{Viappiani2006PreferencebasedSU,
  title={Preference-based Search using Example-Critiquing with Suggestions},
  author={Paolo Viappiani and Boi Faltings and Pearl Pu},
  journal={ArXiv},
  year={2006},
  volume={abs/1110.0026}
}
  • Paolo Viappiani, Boi Faltings, Pearl Pu
  • Published in J. Artif. Intell. Res. 2006
  • Mathematics, Computer Science
  • ArXiv
  • We consider interactive tools that help users search for their most preferred item in a large collection of options. In particular, we examine example-critiquing, a technique for enabling users to incrementally construct preference models by critiquing example options that are presented to them. We present novel techniques for improving the example-critiquing technology by adding suggestions to its displayed options. Such suggestions are calculated based on an analysis of users' current… CONTINUE READING

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