Séminaire « Thinning the Veil: Combinatorial Search Explainability with Network-Based Models », Sarah Thomson

The next seminar will be given on the June 15th, 2025, 15am in B014 room, by Sarah Thomson, lecturer in Data Science at Edinburgh Napier University, Scotland.

Title :
Thinning the Veil: Combinatorial Search Explainability with Network-Based Models

Abstract:
Network-based representations of fitness landscapes have grown in popularity in the past decade; this is probably because of growing interest in explainability for optimisation algorithms. Local optima networks (LONs) have been especially dominant in the literature and capture an approximation of local optima and their connectivity in the landscape. However, thus far, LONs have been constructed according to a strict definition of what a local optimum is: the result of local search. Many evolutionary approaches do not include this, however. Certain popular algorithms have therefore never been subject to LON analysis. Search trajectory networks (STNs) offer a possible alternative: nodes can be any search space location. However, STNs are not typically modelled in such a way that models temporal stalls: that is, a region in the search space where an algorithm fails to find a better solution over a defined period of time. In this work, we approach this by systematically analysing a special case of STN which we name attractor networks. These offer a coarse-grained view of algorithm behaviour with a singular focus on stall locations. This webinar will describe different network-based models (local optima networks, search trajectory networks, and attractor networks) of algorithm behaviour alongside some recent advances and insights
obtained through their use.

Journée du LISIC

La journée commencera par une présentation des salles hébergeant du matériel de recherche Les membres du laboratoire (permanents ou non-permanents) sont sollicités pour proposer un