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Estimation of the number of sources in unbalanced arrays via information theoretic criteria
Eran Fishler
,
H. Vincent Poor
Electrical and Computer Engineering
High Meadows Environmental Institute
Center for Statistics & Machine Learning
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peer-review
97
Scopus citations
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Keyphrases
Number of Sources
100%
Information Theoretic Criteria
100%
Minimum Description Length
100%
Noise Level
50%
Point Source
25%
Low Computational Complexity
25%
Performance Improvement
25%
Computational Complexity
25%
Spatial Modeling
25%
Robust Estimation
25%
Akaike Information Criterion
25%
Estimation Algorithms
25%
Robust Algorithm
25%
Sensor Array
25%
Real-world Problems
25%
Additive Noise
25%
Consistent Estimator
25%
Non-robust
25%
Implementation Method
25%
Multidimensional Search
25%
Gaussian Assumption
25%
Well-making
25%
Mathematics
Length Estimator
100%
Computer Science
Level Assumption
25%
Gaussian Assumption
25%