National Repository of Grey Literature 1 records found  Search took 0.01 seconds. 
Multi-objective Neural Architecture Search
Pivodová, Renáta ; Pilát, Martin (advisor) ; Kadlecová, Gabriela (referee)
Multi-objective Neural Architecture Search Bc. Ren'ata Pivodov'a Abstract Neural architecture search is a promising approach to automatic neural net- work architecture design, which can save a designer's work. The real world contains a lot of problems, which are time-consuming to solve even by neural architecture search techniques. A lot of these problems require architectures optimized according to different criteria such as quality, time of search, etc. In this work, we present two methods extending the CoDeepNEAT, a state-of- the-art neural architecture search algorithm. The Lamarckian CoDeepNEAT is the CoDeepNEAT enriched with weight inheritance implementation inspired by the Lamarckian theory of evolution. The Multi-objective CoDeepNEAT per- forms a multi-objective minimization of two chosen neural network objectives - the error rate and the number of floating point operations. Thanks to the base NSGA-II algorithm, the Multi-objective CoDeepNEAT searches for well- performing and fast networks. The methods are evaluated on the MNIST and CIFAR-10 datasets. 1

Interested in being notified about new results for this query?
Subscribe to the RSS feed.