Počet záznamů: 1  

Cooperative and graph signal processing

  1. 1.
    SYSNO ASEP0493396
    Druh ASEPM - Kapitola v monografii
    Zařazení RIVC - Kapitola v knize
    NázevBayesian approach to collaborative inference in networks of agents
    Tvůrce(i) Dedecius, Kamil (UTIA-B) RID, ORCID
    Djurić, P. M. (US)
    Celkový počet autorů2
    Zdroj.dok.Cooperative and graph signal processing. - London : Academic Press, 2018 / Djurić Petar M. ; Richard Cédric - ISBN 978-0-12-813677-5
    Rozsah strans. 131-145
    Poč.str.15 s.
    Poč.str.knihy837
    Forma vydáníTištěná - P
    Jazyk dok.eng - angličtina
    Země vyd.US - Spojené státy americké
    Klíč. slovaDistributed estimation ; diffusion network ; information diffusion
    Vědní obor RIVBC - Teorie a systémy řízení
    Obor OECDAutomation and control systems
    CEPGA16-09848S GA ČR - Grantová agentura ČR
    Institucionální podporaUTIA-B - RVO:67985556
    UT WOS000488278200005
    DOI10.1016/B978-0-12-813677-5.00004-3
    AnotaceBayesian inference has become a standard tool in the modern statistical signal processing theory, particularly due to the probabilistically consistent representation of the available knowledge about the variables of interest, and the amount of the uncertainty contained in this knowledge. Unlike in the 'standard' theory, the underlying inferential principles are generally applicable to virtually any inference task, from linear models to nonlinear, mixture, or hierarchical models. Furthermore, the rapid development of the modern devices with high computational performance finally eliminated the major drawback of the Bayesian theory: the frequent analytical intractability of the posterior distributions. This chapter studies the possible implementation of the Bayesian inference in networks of collaborating agents. In particular, we focus on the diffusion networks, where the agents may share information (measurements and/or estimates) with their adjacent neighbors, and incorporate it into own knowledge about the unknown variables of interest. There are several ways how to perform this incorporation in an optimal way according to a convenient user-selected information criterion, and under certain conditions where the model belongs to the exponential family of distributions and the prior distributions are conjugate, the results are analytically tractable. The celebrated Kalman filter serves as an illustrative example demonstrating the straightforward application of the abstractly described principles to a particular problem. It is reformulated for the collaborative estimation task in networks where both the neighbors' observations and posterior distributions are available to each agent. Naturally, the analyticity of the resulting filter is preserved.
    PracovištěÚstav teorie informace a automatizace
    KontaktMarkéta Votavová, votavova@utia.cas.cz, Tel.: 266 052 201.
    Rok sběru2019
Počet záznamů: 1  

  Tyto stránky využívají soubory cookies, které usnadňují jejich prohlížení. Další informace o tom jak používáme cookies.