Inicio  /  Future Internet  /  Vol: 12 Par: 3 (2020)  /  Artículo
ARTÍCULO
TITULO

Graph-based Method for App Usage Prediction with Attributed Heterogeneous Network Embedding

Yifei Zhou    
Shaoyong Li and Yaping Liu    

Resumen

Smartphones and applications have become widespread more and more. Thus, using the hardware and software of users? mobile phones, we can get a large amount of personal data, in which a large part is about the user?s application usage patterns. By transforming and extracting these data, we can get user preferences, and provide personalized services and improve the experience for users. In a detailed way, studying application usage pattern benefits a variety of advantages such as precise bandwidth allocation, App launch acceleration, etc. However, the first thing to achieve the above advantages is to predict the next application accurately. In this paper, we propose AHNEAP, a novel network embedding based framework for predicting the next App to be used by characterizing the context information before one specific App being launched. AHNEAP transforms the historical App usage records in physical spaces to a large attributed heterogeneous network which contains three node types, three edges, and several attributes like App type, the day of the week. Then, the representation learning process is conducted. Finally, the App usage prediction problem was defined as a link prediction problem, realized by a simple neural network. Experiments on the LiveLab project dataset demonstrate the effectiveness of our framework which outperforms the three baseline methods for each tested user.

 Artículos similares

       
 
Xiongfeng Yan and Min Yang    
The shape encoding of geospatial objects is a key problem in the fields of cartography and geoscience. Although traditional geometric-based methods have made great progress, deep learning techniques offer a development opportunity for this classical prob... ver más

 
Lianwei Li, Yangfeng Xu, Cunjin Xue, Yuxuan Fu and Yuanyu Zhang    
It is important to consider where, when, and how the evolution of sea surface temperature anomalies (SSTA) plays significant roles in regional or global climate changes. In the comparison of where and when, there is a great challenge in clearly describin... ver más

 
Mingxuan Che, Kui Yao, Chao Che, Zhangwei Cao and Fanchen Kong    
The current global crisis caused by COVID-19 almost halted normal life in most parts of the world. Due to the long development cycle for new drugs, drug repositioning becomes an effective method of screening drugs for COVID-19. To find suitable drugs for... ver más
Revista: Future Internet

 
Xianjin He, Min Deng and Guowei Luo    
Building pattern recognition is fundamental to a wide range of downstream applications, such as urban landscape evaluation, social analyses, and map generalization. Although many studies have been conducted, there is still a lack of satisfactory results,... ver más

 
Bin Feng, Qing Zhu, Mingwei Liu, Yun Li, Junxiao Zhang, Xiao Fu, Yan Zhou, Maosu Li, Huagui He and Weijun Yang