Link Prediction in Temporal Mobile Database

Journal Title: UNKNOWN - Year 2015, Vol 4, Issue 1

Abstract

"The rapid development of wireless and web technologies has allowed the mobile users to request various kinds of services by mobile devices at anytime and anywhere. The services which are provided to the wireless mobile devices (such as PDAs, Cellular Phones, and Laptops) from anywhere, at any time using ISAP (Information Service and Application Provider) are enhanced by mining and prediction of mobile user behaviors. Given a snapshot of a mobile database, can we infer which customers are likely to access given services in the near future? We formalize this question as the link prediction problem and develop approaches to link prediction based on measures for analyzing the probability of different service access by each customer. Differentiated mobile behaviors among users and temporal periods are not considered simultaneously in the previous works. User relations and temporal property are used simultaneously in this work. Improving the performance of mobile behavior prediction helps the service provider to improve the quality of service. Here, we propose a novel data mining method, namely sequential mobile access pattern ( SMAP-Mine) that can efficiently discover mobile users’ sequential movement patterns associated with requested services. CTMSP-Mine (Cluster-based Temporal Mobile Sequential Pattern - Mine) algorithm is used to mine CTMSPs. In CTMSP-Mine requires user clusters, which are constructed by Cluster-Object-based Smart Cluster Affinity Search Technique (CO-Smart-CAST) and similarities between users are evaluated by Location-Based Service Alignment (LBS-Alignment) to construct the user groups. The temporal property is used by time segmenting the logs using time intervals. The user cluster information resulting from CO-Smart-CAST and the time segmentation table are provided as input to CTMSP-Mine technique, which creates CTMSPs. The prediction strategy uses the patterns to predict the mobile user behavior in the near future. "

Authors and Affiliations

Keywords

Related Articles

Modeling and Forecasting Nigerian Crude Oil Exportation: Seasonal Autoregressive Integrated Moving Average Approach

In the last few decades, crude oil (petroleum) has claimed the topmost position in Nigerian export list, constituting a very fundamental change in the structure of Nigerian international trade. This paper is intended to...

A Review of Safety Procedures and Guide Lines in Manufacturing Workshop

A Review of Safety Procedures and Guide Lines in Manufacturing Workshop

Bioefficacy of Medicinal Plant Extract and Pathogenicity of Verticillium wilt of Soybean (Glycine max (L.) Merr.)

Oil yielding crop Soybean also known as miracle crop as well as leguminous and pulse producing crop. It is second most important oil producing crop grown in both kharip and rabbi season also called as cash coop. The pres...

Estuarine Landforms of Puri Coast in Orissa, India

Abstract: An estuary is a body of water formed where freshwater from rivers and streams flows into the ocean, mixing with the seawater. The processes operating in an estuary are a function of the characteristics of the c...

Integration Satellite Multi Resolution Image Data Using Wavelet Transform to Identify Soil Moisture Dynamics at Lampung Tengah, Indonesia

Integration Satellite Multi Resolution Image Data Using Wavelet Transform to Identify Soil Moisture Dynamics at Lampung Tengah, Indonesia

Download PDF file
  • EP ID EP339480
  • DOI -
  • Views 67
  • Downloads 0

How To Cite

(2015). Link Prediction in Temporal Mobile Database. UNKNOWN, 4(1), -. https://europub.co.uk/articles/-A-339480