| Literature DB >> 26251903 |
Xin Wei1, Chunguang Li2, Liang Zhou3, Li Zhao4.
Abstract
Distributed density estimation in sensor networks has received much attention due to its broad applicability. When encountering high-dimensional observations, a mixture of factor analyzers (MFA) is taken to replace mixture of Gaussians for describing the distributions of observations. In this paper, we study distributed density estimation based on a mixture of factor analyzers. Existing estimation algorithms of the MFA are for the centralized case, which are not suitable for distributed processing in sensor networks. We present distributed density estimation algorithms for the MFA and its extension, the mixture of Student's t-factor analyzers (MtFA). We first define an objective function as the linear combination of local log-likelihoods. Then, we give the derivation process of the distributed estimation algorithms for the MFA and MtFA in details, respectively. In these algorithms, the local sufficient statistics (LSS) are calculated at first and diffused. Then, each node performs a linear combination of the received LSS from nodes in its neighborhood to obtain the combined sufficient statistics (CSS). Parameters of the MFA and the MtFA can be obtained by using the CSS. Finally, we evaluate the performance of these algorithms by numerical simulations and application example. Experimental results validate the promising performance of the proposed algorithms.Entities:
Keywords: distributed density estimation; mixture of Student’s t-factor analyzers; mixture of factor analyzers; sensor network
Year: 2015 PMID: 26251903 PMCID: PMC4570359 DOI: 10.3390/s150819047
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1A sensor network consists of a collection of cooperating nodes. Node m only exchanges information (e.g., local sufficient statistics (LSS) in the proposed D-MFA and D-MtFA algorithms) with nodes in .
Figure 2Network connection.
Figure 3Scatter plot of observations with the estimated parameters at 2D principal subspace using different schemes: (a) S-MFA; (b) D-MFA; (c) NC-MFA; (d) D-GMM.
Figure 4Log-likelihood changes of three MFA schemes during 30 iterations.
Figure 5The estimated mixing proportions in the D-MFA and the NC-MFA at 100 nodes.
Figure 6The mean and standard deviation of all of the vector components in estimated over 100 nodes.
Figure 7Scatter plot of observations with the estimated parameters at the 2D principal subspace using different schemes: (a) S-MtFA; (b) D-MtFA; (c) NC-MtFA; (d) D-tMM.
Figure 8Clustering results of the wine dataset at (a–h) Node 1∼Node 8.