Litcius/Paper detail

Nonnegative Matrix Factorization Based Heterogeneous Graph Embedding Method for Trigger-Action Programming in IoT

Yongheng Xing, Liang Hu, Xiaolu Zhang, Gang Wu, Feng Wang

2021IEEE Transactions on Industrial Informatics13 citationsDOI

Abstract

Nowadays, users can personalize Internet of Things (IoT) devices/web services via trigger-action programming (TAP). As the number of connected entities grows, the relations of triggers and actions become progressively complex (i.e., the heterogeneity of TAP), which becomes a challenge for existing models to completely preserve the heterogeneous data and semantic information in trigger and action. To address this issue, in this article, we propose IoT nonnegative matrix factorization (IoT-NMF), a NMF-based heterogeneous graph embedding method for TAP. Prior to using IoT-NMF, we map triggers and actions to an IoT heterogeneous information network, from which we can extract three structures that preserve heterogeneous relations in triggers and actions. IoT-NMF can factorize the structures simultaneously for getting low-dimensional representation vectors of the triggers and actions, which can be further utilized in Artificial Intelligence of Things applications (e.g., TAP rule recommendation). Finally, we demonstrate the proposed approach using an if this then that (IFTTT) dataset. The result shows that IoT-NMF outperforms the state-of-the-art approaches.

Topics & Concepts

Computer scienceNon-negative matrix factorizationEmbeddingMatrix decompositionGraphInternet of ThingsTheoretical computer scienceHeterogeneous networkRepresentation (politics)Graph embeddingArtificial intelligenceDistributed computingWirelessWireless networkWorld Wide WebPhysicsEigenvalues and eigenvectorsTelecommunicationsLawQuantum mechanicsPoliticsPolitical scienceAdvanced Graph Neural NetworksCaching and Content DeliveryRecommender Systems and Techniques