Using the Comparative Hybrid Approach to Disentangle the Role of Substrate Choice on the Evolution of Cognition
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- @Article{Bohm:2022:AlifeJ,
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author = "Clifford Bohm and Sarah Albani and Charles Ofria and
Acacia Ackles",
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journal = "Artificial Life",
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title = "Using the Comparative Hybrid Approach to Disentangle
the Role of Substrate Choice on the Evolution of
Cognition",
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year = "2022",
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volume = "28",
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number = "4",
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pages = "423--439",
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abstract = "Understanding the structure and evolution of natural
cognition is a topic of broad scientific interest, as
is the development of an engineering toolkit to
construct artificial cognitive systems. One open
question is determining which components and techniques
to use in such a toolkit. To investigate this question,
we employ agent-based AI, using simple computational
substrates (i.e., digital brains) undergoing rapid
evolution. Such systems are an ideal choice as they are
fast to process, easy to manipulate, and transparent
for analysis. Even in this limited domain, however,
hundreds of different computational substrates are
used. While benchmarks exist to compare the quality of
different substrates, little work has been done to
build broader theory on how substrate features
interact. We propose a technique called the Comparative
Hybrid Approach and develop a proof-of-concept by
systematically analysing components from three
evolvable substrates: recurrent artificial neural
networks, Markov brains, and Cartesian genetic
programming. We study the role and interaction of
individual elements of these substrates by recombining
them in a piecewise manner to form new hybrid
substrates that can be empirically tested. Here, we
focus on network sparsity, memory discretization, and
logic operators of each substrate. We test the original
substrates and the hybrids across a suite of distinct
environments with different logic and memory
requirements. While we observe many trends, we see that
discreteness of memory and the Markov brain logic gates
correlate with high performance across our test
conditions. Our results demonstrate that the
Comparative Hybrid Approach can identify structural
subcomponents that predict task performance across
multiple computational substrates.",
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keywords = "genetic algorithms, genetic programming, Digital
evolution, artificial intelligence, cognitive
substrate, neuroscience, neuroevolution, Markov brain",
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DOI = "doi:10.1162/artl_a_00372",
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ISSN = "1064-5462",
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month = jan,
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notes = "Also known as \cite{10302012}",
- }
Genetic Programming entries for
Clifford Bohm
Sarah Albani
Charles Ofria
Acacia Ackles
Citations