6533b86ffe1ef96bd12ce6bc
RESEARCH PRODUCT
Topology Inference and Signal Representation Using Dictionary Learning
Mahmoud Ramezani-mayiamiKarl Skrettingsubject
Computer science0202 electrical engineering electronic engineering information engineeringInferenceGraph (abstract data type)Topological graph theory020206 networking & telecommunications020201 artificial intelligence & image processingTopology inference02 engineering and technologyNeural codingAlgorithmDictionary learningGraphdescription
This paper presents a Joint Graph Learning and Signal Representation algorithm, called JGLSR, for simultaneous topology learning and graph signal representation via a learned over-complete dictionary. The proposed algorithm alternates between three main steps: sparse coding, dictionary learning, and graph topology inference. We introduce the “transformed graph” which can be considered as a projected graph in the transform domain spanned by the dictionary atoms. Simulation results via synthetic and real data show that the proposed approach has a higher performance when compared to the well-known algorithms for joint undirected graph topology inference and signal representation, when there is no information about the transform domain. Five performance measures are used to compare JGLSR with two conventional algorithms and show its higher performance.
year | journal | country | edition | language |
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2019-09-01 | 2019 27th European Signal Processing Conference (EUSIPCO) |