Information extraction challenges in managing unstructured data

Author:

Doan AnHai1,Naughton Jeffrey F.1,Ramakrishnan Raghu1,Baid Akanksha1,Chai Xiaoyong1,Chen Fei1,Chen Ting1,Chu Eric1,DeRose Pedro1,Gao Byron1,Gokhale Chaitanya1,Huang Jiansheng1,Shen Warren1,Vuong Ba-Quy1

Affiliation:

1. University of Wisconsin-Madison

Abstract

Over the past few years, we have been trying to build an end-to-end system at Wisconsin to manage unstructured data, using extraction, integration, and user interaction. This paper describes the key information extraction (IE) challenges that we have run into, and sketches our solutions. We discuss in particular developing a declarative IE language, optimizing for this language, generating IE provenance, incorporating user feedback into the IE process, developing a novel wiki-based user interface for feedback, best-effort IE, pushing IE into RDBMSs, and more. Our work suggests that IE in managing unstructured data can open up many interesting research challenges, and that these challenges can greatly benefit from the wealth of work on managing structured data that has been carried out by the database community.

Publisher

Association for Computing Machinery (ACM)

Subject

Information Systems,Software

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