Interaction-Based Distributed Learning in Cyber-Physical and Social Networks

التفاصيل البيبلوغرافية
العنوان: Interaction-Based Distributed Learning in Cyber-Physical and Social Networks
المؤلفون: Giuseppe Notarstefano, Angelo Coluccia, Francesco Sasso
المساهمون: Sasso, F., Coluccia, A., Notarstefano, G., Sasso F., Coluccia A., Notarstefano G.
المصدر: IEEE Transactions on Automatic Control
سنة النشر: 2020
مصطلحات موضوعية: FOS: Computer and information sciences, 0209 industrial biotechnology, Computer science, Maximum likelihood, Mathematics - Statistics Theory, Statistics Theory (math.ST), 02 engineering and technology, Machine learning, computer.software_genre, Machine Learning (cs.LG), Naive Bayes classifier, 020901 industrial engineering & automation, FOS: Mathematics, consensu, Electrical and Electronic Engineering, Mathematics - Optimization and Control, Finite set, Hyperparameter, business.industry, Cyber-physical system, Probabilistic logic, Estimator, Classification, distributed estimation, Computer Science Applications, Computer Science - Learning, Optimization and Control (math.OC), Control and Systems Engineering, Distributed algorithm, Graph (abstract data type), Anomaly detection, Artificial intelligence, distributed learning, business, computer, Random variable, distributed optimization, empirical Bayes
الوصف: In this paper we consider a network scenario in which agents can evaluate each other according to a score graph that models some physical or social interaction. The goal is to design a distributed protocol, run by the agents, allowing them to learn their unknown state among a finite set of possible values. We propose a Bayesian framework in which scores and states are associated to probabilistic events with unknown parameters and hyperparameters respectively. We prove that each agent can learn its state by means of a local Bayesian classifier and a (centralized) Maximum-Likelihood (ML) estimator of the parameter-hyperparameter that combines plain ML and Empirical Bayes approaches. By using tools from graphical models, which allow us to gain insight on conditional dependences of scores and states, we provide two relaxed probabilistic models that ultimately lead to ML parameter-hyperparameter estimators amenable to distributed computation. In order to highlight the appropriateness of the proposed relaxations, we demonstrate the distributed estimators on a machine-to-machine testing set-up for anomaly detection and on a social interaction set-up for user profiling.
وصف الملف: STAMPA
اللغة: English
URL الوصول: https://explore.openaire.eu/search/publication?articleId=doi_dedup___::d0114af91a8ebf7f18c24d48c49b5792
https://hdl.handle.net/11587/441222
حقوق: OPEN
رقم الأكسشن: edsair.doi.dedup.....d0114af91a8ebf7f18c24d48c49b5792
قاعدة البيانات: OpenAIRE