Social Practices: a Complete Formalization
- URL: http://arxiv.org/abs/2206.06088v1
- Date: Sun, 22 May 2022 09:58:42 GMT
- Title: Social Practices: a Complete Formalization
- Authors: Frank Dignum
- Abstract summary: We present a formalization of a social framework for agents based on the concept of Social Practices.
Social practices facilitate the practical reasoning of agents in standard social interactions.
They also come with a social context that gives handles for social planning and deliberation.
- Score: 1.370633147306388
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Multi-agent models are a suitable starting point to model complex social
interactions. However, as the complexity of the systems increase, we argue that
novel modeling approaches are needed that can deal with inter-dependencies at
different levels of society, where many heterogeneous parties (software agents,
robots, humans) are interacting and reacting to each other. In this paper, we
present a formalization of a social framework for agents based on the concept
of Social Practices as high level specifications of normal (expected) behavior
in a given social context. We argue that social practices facilitate the
practical reasoning of agents in standard social interactions. Thus they can
support deliberations for complex situations just like conventions and norms.
However, they also come with a social context that gives handles for social
planning and deliberation in top of the normal functional deliberation. The
main goal of this paper is to give a formalization of social practices that can
be used as a basis for implementations and defining precise structures within
which social learning can take place.
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