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A suboptimum maximum likelihood approach to parametric signal analysis
S. D. Fassois,
K. F. Eman
, S. M. Wu
Mechanical Engineering
Research output
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Article
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peer-review
10
Scopus citations
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Mathematics
Parametric
100%
Likelihood Function
100%
Computational Cost
100%
Likelihood Approach
100%
Maximum Likelihood Method
100%
Wide Sense
100%
Sense Stationary
100%
Minimizes
100%
Stochastics
100%
Maximum Likelihood
100%
Computer Science
Modified Version
100%
Analysis Signal
100%
Suitable Algorithm
100%
Computational Complexity
100%
maximum-likelihood
100%
Computational Cost
100%
Statistical Information
100%
Numerical Simulation
100%
Likelihood Function
100%
Maximum Likelihood Method
100%
Keyphrases
Signal Analysis
100%
Maximum Likelihood Method
100%
Sub-optimum
100%
Numerical Simulation
50%
Computational Cost
50%
Modeling Strategy
50%
Statistical Information
50%
Likelihood Function
50%
Computational Complexity
50%
Easy-to-implement
50%
Online Implementation
50%
Numerical Comparison
50%
Computationally Efficient Approach
50%
Linear Techniques
50%
Quality Estimation
50%
Wide-sense Stationary Signal
50%
ARMA Model
50%
Engineering
Maximum Likelihood
100%
Suboptimum
100%
Recursive
50%
Modeling Strategy
50%
Linear Technique
50%
Computational Cost
50%
Computational Complexity
50%
Likelihood Function
50%