IRAIMay 4, 2012

VIQI: A New Approach for Visual Interpretation of Deep Web Query Interfaces

arXiv:1205.0917v111 citations
Originality Incremental advance
AI Analysis

This addresses the challenge for users in accessing multiple deep web services efficiently, though it appears incremental as it builds on existing interpretation methods.

The paper tackles the problem of interpreting deep web query interfaces visually to enable automated query translation across multiple services, achieving good performance on two standard datasets.

Deep Web databases contain more than 90% of pertinent information of the Web. Despite their importance, users don't profit of this treasury. Many deep web services are offering competitive services in term of prices, quality of service, and facilities. As the number of services is growing rapidly, users have difficulty to ask many web services in the same time. In this paper, we imagine a system where users have the possibility to formulate one query using one query interface and then the system translates query to the rest of query interfaces. However, interfaces are created by designers in order to be interpreted visually by users, machines can not interpret query from a given interface. We propose a new approach which emulates capacity of interpretation of users and extracts query from deep web query interfaces. Our approach has proved good performances on two standard datasets.

Foundations

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