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One-bit null space learning for MIMO underlay cognitive radio
Yair Noam,
Andrea J. Goldsmith
Electrical and Computer Engineering
NextG
School of Engineering & Applied Science
Research output
:
Contribution to conference
›
Paper
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peer-review
1
Scopus citations
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Keyphrases
One-bit
100%
Null Space Learning
100%
Underlay Cognitive Radio
100%
Learning Algorithm
75%
Transmission Signal
50%
Secondary User
50%
Convergence Analysis
25%
Extracting Information
25%
Null Space
25%
Channel Information
25%
Linear Convergence
25%
Signaling Channel
25%
Control Channel
25%
Interference Channel
25%
Binary Function
25%
Quadratic Convergence Rate
25%
Signal Interference
25%
Cognitive MIMO
25%
Noise Power Ratio
25%
Engineering
Null Space
100%
Multiple-Input Multiple-Output
100%
Cognitive Radio
100%
Learning Algorithm
60%
Convergence Rate
40%
Secondary User
40%
Primary User
40%
Interference Channel
20%
Power Ratio
20%
Noise Power
20%
Quadratic Convergence
20%
Signal Channel
20%
Control Channel
20%