Boolean classifiers can be evolved by means of genetic algorithms. This can be done within an intercommunicating island system, of evolutionary niches, undergoing cycles that alternate long periods of isolation to short periods of information exchange. In these settings, the efficiency of the communication is a key requirement. In the present work, we address this requirement by providing a technique for efficiently representing and transmitting differential encodings of Boolean functions. We introduce a new class of Boolean Neural Networks (BNN), the all-implicants BNN, and show that this representation supports efficient update communication, better than the classical representation, based on truth tables.

Buffoni, F., Gianini, G., Damiani, E., Granitzer, M. (2018). All-Implicants Neural Networks for Efficient Boolean Function Representation. In Proceedings - 2018 IEEE International Conference on Cognitive Computing, ICCC 2018 - Part of the 2018 IEEE World Congress on Services (pp.82-86). IEEE [10.1109/ICCC.2018.00019].

All-Implicants Neural Networks for Efficient Boolean Function Representation

Gianini, G;
2018

Abstract

Boolean classifiers can be evolved by means of genetic algorithms. This can be done within an intercommunicating island system, of evolutionary niches, undergoing cycles that alternate long periods of isolation to short periods of information exchange. In these settings, the efficiency of the communication is a key requirement. In the present work, we address this requirement by providing a technique for efficiently representing and transmitting differential encodings of Boolean functions. We introduce a new class of Boolean Neural Networks (BNN), the all-implicants BNN, and show that this representation supports efficient update communication, better than the classical representation, based on truth tables.
paper
Genetic Algorithms; Boolean Functions; Boolean Classifiers; Artificial Neural Networks; Michigan style learning classifier systems; Evolutionary island system
English
2018 IEEE International Conference on Cognitive Computing, ICCC 2018 - 2 July 2018 through 7 July 2018
2018
Proceedings - 2018 IEEE International Conference on Cognitive Computing, ICCC 2018 - Part of the 2018 IEEE World Congress on Services
9781538672419
2018
82
86
8457700
reserved
Buffoni, F., Gianini, G., Damiani, E., Granitzer, M. (2018). All-Implicants Neural Networks for Efficient Boolean Function Representation. In Proceedings - 2018 IEEE International Conference on Cognitive Computing, ICCC 2018 - Part of the 2018 IEEE World Congress on Services (pp.82-86). IEEE [10.1109/ICCC.2018.00019].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/454860
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