Title :
EPE: An Embedded Personalization Engine for Mobile Users
Author :
JongWoo Ha ; Jung-Hyun Lee ; Sangkeun Lee
Author_Institution :
Korea Univ., Seoul, South Korea
Abstract :
The proposed embedded personalization engine (EPE) utilizes valuable in-device usage data for inferring mobile user interests in a privacy-preserving manner. To provide users with personalized services, the proposed approach analyzes both the usage data inside a mobile device and service items--such as news articles and mobile apps--using the Open Directory Project (ODP) as a knowledge base. Embedded classification and ranking methodologies effectively match such service items with inferred user interests. The scenario-based evaluation clearly shows that the proposed EPE gives users highly personalized services with both reasonable perceived latency and little energy consumption.
Keywords :
data privacy; human factors; mobile computing; pattern classification; personal computing; EPE; ODP; embedded classification methodology; embedded personalization engine; energy consumption; knowledge base; mobile apps; mobile device; mobile user interests; news articles; open directory project; perceived latency; personalized services; privacy-preserving manner; ranking methodology; scenario-based evaluation; service items; usage data analysis; valuable in-device usage data; Computer architecture; Electronic mail; High performance computing; Internet; Mobile communication; Mobile handsets; Servers; Internet computing; information search and retrieval; mobile computing; personalization; text mining;
Journal_Title :
Internet Computing, IEEE
DOI :
10.1109/MIC.2013.124