KMi Seminars
Assumption-based argumentation
This event took place on Monday 11 June 2007 at 11:30

 
Dr Francesca Toni Imperial College London, Department of Computing

Argumentation has proven to be a useful abstraction mechanism for understanding several problems, for example non-monotonic, defeasible reasoning in artificial intelligence, legal reasoning, several forms of practical reasoning performed by intelligent agents, medical decision-making, and security.

In order to provide tools to solve these problems, several computational frameworks for argumentation have been proposed, often based upon Dung's abstract argumentation. This form of argumentation focuses on determining the "acceptability'' of arguments based upon their capability to counter-attack all arguments attacking them. In abstract argumentation these arguments and attack relation between arguments are seen as primitive notions, defined entirely abstractly, and this allows for intuitive and simple computational models, but does
not show how to find arguments and how to exploit the fact that different arguments are built from the same premises. Assumption-based argumentation is a general-purpose framework for argumentation, whereby arguments and attack relation are not primitive concepts, but are defined instead in terms of deductions from assumptions and contraries of assumptions.

In this talk I will describe assumption-based argumentation, how it relates to abstract argumentation, several computational models for assumption-based argumentation, a family of systems implementing these models and some applications. I will also discuss the limitations of these systems when deployed by non-expert users.

 
KMi Seminars
 

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.

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