posted by organizer: facaraff || 1706 views || tracked by 2 users: [display]

AABOH 2024 2024 : GECCO 2024 Workshop: Analysing algorithmic behaviour of optimisation heuristics

FacebookTwitterLinkedInGoogle

Link: https://aaboh.nl/
 
When Jul 14, 2024 - Jul 18, 2024
Where Melbourne (Hybrid)
Submission Deadline Apr 8, 2024
Categories    optimisation   machine learning   benchmarking   evolutionary computation
 

Call For Papers

Optimisation and Machine Learning tools are among the most used tools in the modern world with their omnipresent computing devices. Yet, while both these tools rely on search processes (search for a solution or a model able to produce solutions), their dynamics have not been fully understood. This scarcity of knowledge on the inner workings of heuristic methods is largely attributed to the complexity of the underlying processes, which cannot be subjected to a complete theoretical analysis. However, this is also partially due to a superficial experimental setup and, therefore, a superficial interpretation of numerical results. Researchers and practitioners typically only look at the final result produced by these methods. Meanwhile, a great deal of information is wasted in the run. In light of such considerations, it is now becoming more evident that such information can be useful and that some design principles should be defined that allow for online or offline analysis of the processes taking place in the population and their dynamics.

Hence, with this workshop, we call for both theoretical and empirical achievements in identifying the desired features of optimisation and machine learning algorithms, quantifying the importance of such features, spotting the presence of intrinsic structural biases and other undesired algorithmic flaws, studying the transitions in algorithmic behaviour in terms of convergence, any-time behaviour, traditional and alternative performance measures, robustness, exploration vs exploitation balance, diversity, algorithmic complexity, etc., to gather the most recent advances to fill the aforementioned knowledge gap and disseminate the current state-of-the-art within the research community.
Thus, we encourage submissions exploiting carefully designed experiments or data-heavy approaches that can come to help in analysing primary algorithmic behaviours and modelling internal dynamics causing them.

Related Resources

AABOH GECCO 2025   GECCO 2025 Workshop: Analysing algorithmic behaviour of optimisation heuristics
Ei/Scopus-ITCC 2026   2026 6th International Conference on Information Technology and Cloud Computing (ITCC 2026)
GECCO 2025   Genetic and Evolutionary Computation Conference
AMLDS 2026   IEEE--2026 2nd International Conference on Advanced Machine Learning and Data Science
Student Workshop GECCO 2025   Student Workshop @ GECCO 2025
Ei/Scopus-CEICE 2026   2026 3rd International Conference on Electrical, Information and Communication Engineering (CEICE 2026)
AAIML 2026   IEEE--2026 International Conference on Advances in Artificial Intelligence and Machine Learning
Ei/Scopus-CMLDS 2026   2026 3rd International Conference on Computing, Machine Learning and Data Science (CMLDS 2026)
CACML 2026   2026 5th Asia Conference on Algorithms, Computing and Machine Learning (CACML 2026)
KDD 2026   32nd ACM SIGKDD Conference on Knowledge Discovery and Data Mining