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Machine Creativity Edinburgh Simon Colton Universities of Edinburgh and York.

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Presentation on theme: "Machine Creativity Edinburgh Simon Colton Universities of Edinburgh and York."— Presentation transcript:

1 Machine Creativity Research @ Edinburgh Simon Colton Universities of Edinburgh and York

2 Overview Players Research Contacts Possibilities

3 Creativity Researchers Graeme Ritchie Literary creativity, assessment of creativity Simon Colton Scientific theory formation Alison Pease Cognitive modelling Alan Bundy? Roy McCasland?

4 Graeme Ritchie Literary/Linguistic creativity Computational humour With Kim Binsted: JAPE joke generator See Binsted PhD, AISB’00 paper Assessment of creative programs Take into account the inspiring set Fine tuning, creative set (with Pease & Colton) Shotgun approach See AISB’01 paper, ICCBR’01 workshop paper

5 Simon Colton The HR program Overview Scientific theory formation Implemented in the HR program Starts with ML-style background info Invents concepts (definitions and examples) Makes, proves, disproves hypotheses Used in mathematical domains Integrates with ATP, CAS, CSP, Databases Applied to mathematical discovery

6 The Application of HR Number theory Invention of integer sequences & theorems Constraint invention (with Ian Miguel) Speed up CSPs, 10x for QG4-quasigroups ATP (with Geoff Sutcliffe) Lemma generation, theorems to break provers Puzzle generation Study of machine creativity Cross-domain, meta-theory, multi-agent, interestingness

7 HR for Bioinformatics HR is now independent of maths Theory extends to other sciences E.g., making of empirically false hypotheses Multi-agent approach for large datasets Machine learning problems Concept identification: forward look-ahead Prediction: uses the whole theory Very preliminary Application to ML datasets Comparison of methods next

8 Alison Pease Phd proposal: A computational model of mathematical creativity via Interaction Using HR to perform cognitive modelling Multi-agent setting (see IAT paper) Lakatos-style reasoning Fixing faulty hypotheses (see ECAI paper) Conjecture-driven concept formation Implications for creativity Fit into Boden’s framework (see ICCBR’01 paper)

9 Contacts Edinburgh UK national centre for E-science (GRID) Bioinformatics group York Machine learning group Imperial Bioinformatics group (Muggleton)

10 Possibilities Problem with Large Datasets Multi-agent creativity (split data) Domain knowledge Cognitive Modelling HR applied to Bioinformatics Serious Case Study (Roy McCasland) EPSRC 1-year fellowship (fingers crossed) Using HR to Study Zariski Spaces


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