DocumentCode
3656916
Title
Temporal and multi-source fusion for detection of innovation in collaboration networks
Author
Benjamin A. Miller;Michelle S. Beard;Manfred D. Laubichler;Nadya T. Bliss
Author_Institution
MIT Lincoln Laboratory, Lexington, Massachusetts 02420
fYear
2015
fDate
7/1/2015 12:00:00 AM
Firstpage
659
Lastpage
665
Abstract
A common problem in network analysis is detecting small subgraphs of interest within a large background graph. This includes multi-source fusion scenarios where data from several modalities must be integrated to form the network. This paper presents an application of novel techniques leveraging the signal processing for graphs algorithmic framework, to well-studied collaboration networks in the field of evolutionary biology. Our multi-disciplinary approach allows us to leverage case studies of transformative periods in this scientific field as truth. We build on previous work by optimizing the temporal integration filters with respect to truth data using a tensor decomposition method that maximizes the spectral norm of the integrated subgraph´s adjacency matrix. We also demonstrate that we can mitigate data corruption via fusion of different data sources, demonstrating the power of this analysis framework for incomplete and corrupted data.
Keywords
"Technological innovation","Image edge detection","Tensile stress","Noise","Biology","Computational modeling","Eigenvalues and eigenfunctions"
Publisher
ieee
Conference_Titel
Information Fusion (Fusion), 2015 18th International Conference on
Type
conf
Filename
7266623
Link To Document