KMi Seminars
Explainable Systems
This event took place on Monday 09 May 2005 at 10:00

 
Dr. Paulo Pinheiro da Silva

When most current applications return answers, many users do not know what information sources were used, when they were updated, how reliable the source was, or what information was looked up versus derived. Many users also do not know how answers were derived. In this talk, we first show examples of explanations helping users to understand and trust system answers. Then we introduce the Inference Web (IW), our solution that enables explainable systems. IW aims to take opaque query answers and make the answers more transparent by providing infrastructure for presenting and managing explanations. The explanations include information concerning where answers came from (knowledge provenance) and how they were derived (or retrieved). The infrastructure includes:
  • IWBase: an extensible web-based registry containing details
    about information sources, reasoners, languages, and rewrite rules;

  • PML: the Proof Markup Language, an interlingua representation
    for justifications of results produced by software systems; and

  • a comprehensive tool suite for browsing, checking and
    abstracting proofs, and explaining answers through dialogues with users.
Finally, we report on current Inference Web applications including details about two of these applications: explaining extraction as inference in support of IBM's Unstructured Information Management Architecture (UIMA) effort, and explaining task processing as inference in support of DARPA PAL's CALO personal assistant project.

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KMi Seminars Event | SSSW 2013, The 10th Summer School on Ontology Engineering and the Semantic Web Journal | 25 years of knowledge acquisition
 

Multimedia and Information Systems is...


Multimedia and Information Systems
Our research is centred around the theme of Multimedia Information Retrieval, ie, Video Search Engines, Image Databases, Spoken Document Retrieval, Music Retrieval, Query Languages and Query Mediation.

We focus on content-based information retrieval over a wide range of data spanning form unstructured text and unlabelled images over spoken documents and music to videos. This encompasses the modelling of human perception of relevance and similarity, the learning from user actions and the up-to-date presentation of information. Currently we are building a research version of an integrated multimedia information retrieval system MIR to be used as a research prototype. We aim for a system that understands the user's information need and successfully links it to the appropriate information sources, be it a report or a TV news clip. This work is guided by the vision that an automated knowledge extraction system ultimately empowers people making efficient use of information sources without the burden of filing data into specialised databases.

Visit the MMIS website