Publication Details
Evolutionary Design of Reduced Precision Preprocessor for Levodopa-Induced Dyskinesia Classifier
Drahošová Michaela, Ing., Ph.D. (DCSY FIT BUT)
Mrázek Vojtěch, Ing., Ph.D. (DCSY FIT BUT)
Cartesian genetic programming, compositional coevolution, adaptive size fitness predictors, levodopa-induced dyskinesia, approximate magnitude, energy-efficient
The aim of this work is to design a hardware-efficient implementation of data preprocessing in the task of levodopa-induced dyskinesia classification. In this task, there are three approaches implemented and compared: 1) evolution of magnitude approximation using Cartesian genetic programming, 2) design of preprocessing unit using two-population coevolution (2P-CoEA) of cartesian programs and fitness predictors, which are small subsets of training set, and 3) a design using three-population coevolution (3P-CoEA) combining compositional coevolution of preprocessor and classifier with coevolution of fitness predictors. Experimental results show that all of the three investigated approaches are capable of producing energy-saving solutions, suitable for implementation in hardware unit, with a quality comparable to baseline software implementation. Design of approximate magnitude leads to correctly working solutions, however, more energy-demanding than other investigated approaches. 3P-CoEA is capable of designing both preprocessor and classifier compositionally while achieving smaller solutions than the design of approximate magnitude. Presented 2P-CoEA results in the smallest and the most energy-efficient solutions along with producing a solution with significantly better classification quality for one part of test data in comparison with the software implementation.
@INPROCEEDINGS{FITPUB12725, author = "Martin Hurta and Michaela Draho\v{s}ov\'{a} and Vojt\v{e}ch Mr\'{a}zek", title = "Evolutionary Design of Reduced Precision Preprocessor for Levodopa-Induced Dyskinesia Classifier", pages = "491--504", booktitle = "Parallel Problem Solving from Nature - PPSN XVII", series = "Lecture Notes in Computer Science", volume = 13398, year = 2022, location = "Dortmund, DE", publisher = "Springer Nature Switzerland AG", ISBN = "978-3-031-14713-5", doi = "10.1007/978-3-031-14714-2\_34", language = "english", url = "https://www.fit.vut.cz/research/publication/12725" }