A Variable Impacts Measurement in Random Forest for Mobile Cloud Computing
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초록

Recently, the importance of mobile cloud computing has increased. Mobile devices can collect personal data from various sensors within a shorter period of time and sensor-based data consists of valuable information from users. Advanced computation power and data analysis technology based on cloud computing provide an opportunity to classify massive sensor data into given labels. Random forest algorithm is known as black box model which is hardly able to interpret the hidden process inside. In this paper, we propose a method that analyzes the variable impact in random forest algorithm to clarify which variable affects classification accuracy the most. We apply Shapley Value with random forest to analyze the variable impact. Under the assumption that every variable cooperates as players in the cooperative game situation, Shapley Value fairly distributes the payoff of variables. Our proposed method calculates the relative contributions of the variables within its classification process. In this paper, we analyze the influence of variables and list the priority of variables that affect classification accuracy result. Our proposed method proves its suitability for data interpretation in black box model like a random forest so that the algorithm is applicable in mobile cloud computing environment.

제목
A Variable Impacts Measurement in Random Forest for Mobile Cloud Computing
저자
Hur, Jae-HeeIhm, Sun-YoungPark, Young-Ho
DOI
10.1155/2017/6817627
발행일
2017-09
유형
Article
저널명
Wireless Communications and Mobile Computing
2017
페이지
1 ~ 13