
Learning to sense from events via semantic variational autoencoder
Author(s) -
Marcos Paulo Silva Gôlo,
Rafael Rossi,
Solange Oliveira Rezende
Publication year - 2021
Publication title -
plos one
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.99
H-Index - 332
ISSN - 1932-6203
DOI - 10.1371/journal.pone.0260701
Subject(s) - autoencoder , computer science , event (particle physics) , artificial intelligence , class (philosophy) , set (abstract data type) , machine learning , meaning (existential) , space (punctuation) , vector space , function (biology) , natural language processing , interdependence , artificial neural network , mathematics , political science , law , operating system , psychology , physics , geometry , quantum mechanics , evolutionary biology , psychotherapist , biology , programming language
In this paper, we introduce the concept of learning to sense, which aims to emulate a complex characteristic of human reasoning: the ability to monitor and understand a set of interdependent events for decision-making processes. Event datasets are composed of textual data and spatio-temporal features that determine where and when a given phenomenon occurred. In learning to sense, related events are mapped closely to each other in a semantic vector space, thereby identifying that they contain similar contextual meaning. However, learning a semantic vector space that satisfies both textual similarities and spatio-temporal constraints is a crucial challenge for event analysis and sensing. This paper investigates a Semantic Variational Autoencoder (SVAE) to fine-tune pre-trained embeddings according to both textual and spatio-temporal events of the class of interest. Experiments involving more than one hundred sensors show that our SVAE outperforms a competitive one-class classification baseline. Moreover, our proposal provides desirable learning requirements to sense scenarios, such as visualization of the sensor decision function and heat maps with the sensor’s geographic impact.