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Sciences humaines et sociales   > Accueil   > Modélisation et utilisation du contexte   > Numéro 1   > Article

Modélisation des actions humaines à travers le contexte

Modeling Human Actions through Context


Avelino J. Gonzalez
Computer Science Department University of Central Florida
Orlando FL USA



Publié le 11 mai 2017   DOI : 10.21494/ISTE.OP.2017.0147

Résumé

Abstract

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This paper presents and discusses how context is being used to model intelligent human activity –
specifically, tactical actions. Tactical behavior involves selection and execution of courses of action that address the current needs of the agent. The discussion centers about the work done in the author’s research laboratory that addresses tactical behavior by an agent. A limited discussion about the works of others is also included. Two points of view are discussed vis-à-vis the tactical behavior of an agent : a) from the point of view of a performer of an action (the doer), and b) from the standpoint of one who directs others (agents or humans) to perform the actions (a manager, commander or coach). Additionally, the role that can be played by context in machine learning of tactical behavior is also discussed. This particularly focuses on learning from observation of human performance, known as LfO. LfO has been found to be an effective way for learning agents to learn how to perform certain tasks that are performed by a human and whose actions are observed (i.e., recorded in a time-stamped trace of what actions were taken when).

This paper presents and discusses how context is being used to model intelligent human activity –
specifically, tactical actions. Tactical behavior involves selection and execution of courses of action that address the current needs of the agent. The discussion centers about the work done in the author’s research laboratory that addresses tactical behavior by an agent. A limited discussion about the works of others is also included. Two points of view are discussed vis-à-vis the tactical behavior of an agent: a) from the point of view of a performer of an action (the doer), and b) from the standpoint of one who directs others (agents or humans) to perform the actions (a manager, commander or coach). Additionally, the role that can be played by context in machine learning of tactical behavior is also discussed. This particularly focuses on learning from observation of human performance, known as LfO. LfO has been found to be an effective way for learning agents to learn how to perform certain tasks that are performed by a human and whose actions are observed (i.e., recorded in a time-stamped trace of what actions were taken when).

Context-based Reasoning tactical reasoning human performance modeling decision support

Context-based Reasoning tactical reasoning human performance modeling decision support