Speaking of Relations: Connecting Statistical Relational Learning and Multi-Agent Systems
نویسندگان
چکیده
We discuss the relationship between the fields of statistical relational learning (SRL) and multi-agent systems (MAS). We identify a number of SRL research problems that have analogies in MAS research, and vice-versa, and suggest how research from each area can be leveraged to provide solutions for the other.
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