Title :
Evolving the User Graph: From unsupervised topic models to knowledge assisted networks
Author :
Sathish, Sailesh ; Patankar, Anish ; Neema, Nirmesh ; Jagadeesha, Swetha ; Priyodit, Nimesh
Author_Institution :
Samsung R&D Inst., Bangalore, India
Abstract :
The next generation intelligent devices need to understand and evolve with the user. Towards this goal, we present a User Graph generation framework that models user´s level of interest and knowledge across a set of categories. The user graph is built through an unsupervised and semi-supervised topic modeling process, using latent semantic analysis technology. The self-evolving framework utilizes in-device user data, is built and managed within a local mobile device, thereby ensuring user privacy without the need for additional network based infrastructure. We present and analyze our trial results, aimed at optimizing model accuracy and execution efficiency. In addition to native application adaptation use cases, we also present three new services: Graph Clusters, Graph Shares and Graph Nets that utilize the framework.
Keywords :
graph theory; human factors; mobile computing; mobile handsets; unsupervised learning; graph clusters; graph nets; graph shares; in-device user data; knowledge assisted networks; latent semantic analysis technology; local mobile device; network based infrastructure; next generation intelligent devices; semisupervised topic modeling process; unsupervised topic models; user graph generation framework; user interest level modelling; user knowledge level modelling; user privacy; Accuracy; Adaptation models; Automobiles; Indexes; Uniform resource locators; Vectors; latent semantics; topic modeling; user graphs;
Conference_Titel :
Semantic Computing (ICSC), 2015 IEEE International Conference on
Conference_Location :
Anaheim, CA
DOI :
10.1109/ICOSC.2015.7050792