Back to Search Start Over

Towards Automatic Construction of Multi-Network Models for Heterogeneous Multi-Task Learning

Authors :
Roberto Santana
Alexander Mendiburu
Unai Garciarena
Source :
ACM Transactions on Knowledge Discovery from Data. 15:1-23
Publication Year :
2021
Publisher :
Association for Computing Machinery (ACM), 2021.

Abstract

Multi-task learning, as it is understood nowadays, consists of using one single model to carry out several similar tasks. From classifying hand-written characters of different alphabets to figuring out how to play several Atari games using reinforcement learning, multi-task models have been able to widen their performance range across different tasks, although these tasks are usually of a similar nature. In this work, we attempt to widen this range even further, by including heterogeneous tasks in a single learning procedure. To do so, we firstly formally define a multi-network model, identifying the necessary components and characteristics to allow different adaptations of said model depending on the tasks it is required to fulfill. Secondly, employing the formal definition as a starting point, we develop an illustrative model example consisting of three different tasks (classification, regression and data sampling). The performance of this model implementation is then analyzed, showing its capabilities. Motivated by the results of the analysis, we enumerate a set of open challenges and future research lines over which the full potential of the proposed model definition can be exploited.<br />Preprint

Details

ISSN :
1556472X and 15564681
Volume :
15
Database :
OpenAIRE
Journal :
ACM Transactions on Knowledge Discovery from Data
Accession number :
edsair.doi.dedup.....f5d879f5770aaaed7ddf7a9503001d95