Dillon Ze Chen



        E: dillon dot chen 1 at gmail dot com
        T: +33 05 61 33 63 48
        W: https://dillonzchen.github.io
    

I am a PhD student in automated planning and machine learning supervised by Sylvie Thiébaux in the RIS team.

For research, keep reading below.


Links

[📖 dblp] [🎓 Google Scholar] [🧦 GitHub] [🍋 CV]

News

[2024.09]Paper accepted to NeurIPS-24.
[2024.09]I am giving a talk at the Aachen RLeap Symposium. Thanks Hector for the invitation!
[2024.06]WLPlan, a library implementating the WL Features for PDDL planning described in our ICPAS-24 paper, is now available as an alpha release.
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Research Statement

[short] [medium] [long]

I am interested in the intersection of learning and planning from a theoretical viewpoint.

My previous research background includes complexity theory, machine learning, and various flavours of automated planning (e.g. hierarchical, stochastic, numeric, and multi-objective) and am always open to studying new research fields.

The two main problems I am currently interested in currently are (1) looking into problem methodologies that make model-based planning more applicable and feasible (2) discovering and/or developing theory for the field of learning and planning to improve generalisation, scalability, and solution quality


Publications

ICAPS, AAAI, NeurIPS and ICLR are A* conferences

Conference papers

[C8] Dillon Ze Chen and Sylvie Thiébaux. Learning Heuristics for Numeric Planning. In 38th Conference on Neural Information Processing Systems (NeurIPS), 2024.
pdf ]
[C7] Dillon Ze Chen and Sylvie Thiébaux. Novelty Heuristics, Multi-Queue Search, and Portfolios for Numeric Planning. In 17th International Symposium on Combinatorial Search (SoCS), 2024.
pdf | poster | slides | code ]
[C6] Dillon Ze Chen, Felipe Trevizan, and Sylvie Thiébaux. Return to Tradition: Learning Reliable Heuristics with Classical Machine Learning. In 34th International Conference on Automated Planning and Scheduling (ICAPS), 2024.
pdf | poster | slides | code | plots ]
[C5] Dillon Ze Chen, Sylvie Thiébaux, and Felipe Trevizan. Learning Domain-Independent Heuristics for Grounded and Lifted Planning. In 38th AAAI Conference on Artificial Intelligence, 2024.
pdf | poster | slides | code ]
[C4] Qing Wang, Dillon Ze Chen, Asiri Wijesinghe, Shouheng Li, and Muhammad Farhan. N-WL: A New Hierarchy of Expressivity for Graph Neural Networks. In 11th International Conference on Learning Representations (ICLR), 2023.
pdf | poster | slides | code ]
[C3] Dillon Ze Chen, Felipe Trevizan, and Sylvie Thiébaux. Heuristic Search for Multi-Objective Probabilistic Planning. In 37th AAAI Conference on Artificial Intelligence, 2023.
pdf | poster | slides | code ]
[C2] Dillon Ze Chen and Pascal Bercher. The Complexity of Flexible FOND HTN Planning. In 32nd International Conference on Automated Planning and Scheduling (ICAPS), 2022. Best Undergraduate Student Paper Award.
pdf | poster | slides ]
[C1] Dillon Ze Chen and Pascal Bercher. Fully Observable Nondeterministic HTN Planning – Formalisation and Complexity Results. In 31st International Conference on Automated Planning and Scheduling (ICAPS), 2021. Best Undergraduate Student Paper Award.
pdf | poster | slides ]

Workshop papers

[W3] Dillon Ze Chen, Sylvie Thiébaux, and Felipe Trevizan. GOOSE: Learning Domain-Independent Heuristics. In 7th Workshop on Generalization in Planning (GenPlan), 2023. «Subsumed by [C5]».
pdf | poster | slides ]
[W2] Dillon Ze Chen, Felipe Trevizan, and Sylvie Thiébaux. Graph Neural Networks and Graph Kernels For Learning Heuristics: Is there a difference?. In 7th Workshop on Generalization in Planning (GenPlan), 2023. «Subsumed by [C6]».
pdf | poster ]
[W1] Dillon Ze Chen and Pascal Bercher. The Complexity of Flexible FOND HTN Planning. In 4th ICAPS Workshop on Hierarchical Planning (HPlan), 2021. «Subsumed by [C2]».
pdf ]

Reviewing

I have reviewed for the following conferences and workshops, listed in alphabetical order.

Conferences

Workshops


Clocks

Time zone map


        

        
        

        

        

        

        

        

        

        

        

        
        
        

        
            
        

        

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