Learning to Navigate Web Forms

  • Anthony Tomasic
  • , William W. Cohen
  • , Susan Fussell
  • , John Zimmerman
  • , Marina Kobayashi
  • , Einat Minkov
  • , Nathan Halstead
  • , Ravi Mosur
  • , Jason Hum

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

Abstract

Given a particular update request to a WWW system, users are faced with the navigation problem of finding the correct form to accomplish the update request. In a large system, such as SAP with about 10,000 relations for the standard installation, users are faced with a sea of thousands of forms to navigate. For familiar tasks, users have various aids, such as personal tool bars, but for more complex tasks, users are forced to search or navigate for the correct form, or forward the update request to a specialist with the expertise to handle the request. In this later case, the execution of
the request may be delayed since the specialist may be unavailable, or have other priorities. Also, typically the user and specialist engaged in a time consuming clarification dialog to
extract additional information required to complete the request. In this paper we study the problem of building an assistant for the navigation problem for web forms. This assistant can be deployed either directly to a user, or to specialist that receives a stream of
requests from users. In the former case the assistant helps the user navigate to the right form. In the latter case, the assistant cuts
ambiguous communication between the user and specialist. We present experimental results from behavioral experiments and machine learning that demonstrate the usefulness of our assistant.
Original languageEnglish
Title of host publicationProceedings of the 3rd International Workshop on Information Integration on the Web
Number of pages6
StatePublished - 2004

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