TY - JOUR
T1 - When Will Robots Be Sentient?
AU - Bronfman, Zohar
AU - Ginsburg, Simona
AU - Jablonka, Eva
N1 - Publisher Copyright:
© 2021 World Scientific Publishing Company.
PY - 2021/9/1
Y1 - 2021/9/1
N2 - The current failure to construct an artificial intelligence (AI) agent with the capacity for domain-general learning is a major stumbling block in the attempt to build conscious robots. Taking an evolutionary approach, we previously suggested that the emergence of consciousness was entailed by the evolution of an open-ended domain-general form of learning, which we call unlimited associative learning (UAL). Here, we outline the UAL theory and discuss the constraints and affordances that seem necessary for constructing an AI machine exhibiting UAL. We argue that a machine that is capable of domain-general learning requires the dynamics of a UAL architecture and that a UAL architecture requires, in turn, that the machine is highly sensitive to the environment and has an ultimate value (like self-persistence) that provides shared context to all its behaviors and learning outputs. The implementation of UAL in a machine may require that it is made of "soft"materials, which are sensitive to a large range of environmental conditions, and that it undergoes sequential morphological and behavioral co-development. We suggest that the implementation of these requirements in a human-made robot will lead to its ability to perform domain-general learning and will bring us closer to the construction of a sentient machine.
AB - The current failure to construct an artificial intelligence (AI) agent with the capacity for domain-general learning is a major stumbling block in the attempt to build conscious robots. Taking an evolutionary approach, we previously suggested that the emergence of consciousness was entailed by the evolution of an open-ended domain-general form of learning, which we call unlimited associative learning (UAL). Here, we outline the UAL theory and discuss the constraints and affordances that seem necessary for constructing an AI machine exhibiting UAL. We argue that a machine that is capable of domain-general learning requires the dynamics of a UAL architecture and that a UAL architecture requires, in turn, that the machine is highly sensitive to the environment and has an ultimate value (like self-persistence) that provides shared context to all its behaviors and learning outputs. The implementation of UAL in a machine may require that it is made of "soft"materials, which are sensitive to a large range of environmental conditions, and that it undergoes sequential morphological and behavioral co-development. We suggest that the implementation of these requirements in a human-made robot will lead to its ability to perform domain-general learning and will bring us closer to the construction of a sentient machine.
KW - AI
KW - Development
KW - Domain-General Learning
KW - Evolution
KW - Evolutionary Transition Marker (ETM)
KW - Minimal Consciousness
KW - Soft Materials
KW - Unlimited Associative Learning (UAL)
UR - http://www.scopus.com/inward/record.url?scp=85137469282&partnerID=8YFLogxK
U2 - 10.1142/S2705078521500168
DO - 10.1142/S2705078521500168
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AN - SCOPUS:85137469282
SN - 2705-0785
VL - 8
SP - 183
EP - 203
JO - Journal of Artificial Intelligence and Consciousness
JF - Journal of Artificial Intelligence and Consciousness
IS - 2
ER -