COSMOS: ACONTEXT SENSITIVE M ODEL FOR DYNAMIC CONFIGURATION OF SMART PHONES USING M ULTIFACTOR ANALYSIS

With the prolific growth in usage of smartphones across the spectrum of people in the society it becomes mandatory to handle and configure these deviceseffectively to achieve optimum results from it. This paper proposes a context sensitive model termed COSMOS (COntext Sensitive MOdel for Smartphones)for configuring the smartphones using multifactor analysis with the help of decision trees. The COSMOS model proposed in this paper facilitates the configuration of various smartphone settings implicitly based on the user’s current context, without interrupting the user for various inputs. The COSMOS modelalso proposes multiple context parameters like location,scheduler data, recent call log settings etc to decide the appropriate settings for the smartphone s. The proposed model isvalidated by a prototype implementation in the Android platform. Various tests were conducted in the implementation and thesettings relevancy metric value of 90.95% confirms the efficiency of the proposed model.

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