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Improving and Unfolding Statistical ...
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Wisdom, Scott Thomas.
Improving and Unfolding Statistical Models of Nonstationary Signals.
Record Type:
Language materials, manuscript : Monograph/item
Title/Author:
Improving and Unfolding Statistical Models of Nonstationary Signals./
Author:
Wisdom, Scott Thomas.
Description:
1 online resource (156 pages)
Notes:
Source: Dissertation Abstracts International, Volume: 79-05(E), Section: B.
Subject:
Electrical engineering. -
Online resource:
click for full text (PQDT)
ISBN:
9780355594591
Improving and Unfolding Statistical Models of Nonstationary Signals.
Wisdom, Scott Thomas.
Improving and Unfolding Statistical Models of Nonstationary Signals.
- 1 online resource (156 pages)
Source: Dissertation Abstracts International, Volume: 79-05(E), Section: B.
Thesis (Ph.D.)--University of Washington, 2017.
Includes bibliographical references
Improving the modeling and processing of nonstationary signals remains an important yet challenging problem. In the past, the most effective approach for processing these signals has been statistical modeling. Statistical models can effectively encode domain knowledge and lead to principled algorithms for the fundamental tasks of enhancement, detection, and classification. However, the performance of statistical models can be limited because they inherently make assumptions about the distribution of the data. Deep neural networks, in contrast, have recently outperformed state-of-the-art statistical models of nonstationary signals. Deep neural networks are completely data-driven, and learn to set their parameters by training on large datasets that are assumed to match the distribution of the data.
Electronic reproduction.
Ann Arbor, Mich. :
ProQuest,
2018
Mode of access: World Wide Web
ISBN: 9780355594591Subjects--Topical Terms:
596380
Electrical engineering.
Index Terms--Genre/Form:
554714
Electronic books.
Improving and Unfolding Statistical Models of Nonstationary Signals.
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Wisdom, Scott Thomas.
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Improving and Unfolding Statistical Models of Nonstationary Signals.
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2017
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1 online resource (156 pages)
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Source: Dissertation Abstracts International, Volume: 79-05(E), Section: B.
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Advisers: Les Atlas; James Pitton.
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Thesis (Ph.D.)--University of Washington, 2017.
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Includes bibliographical references
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Improving the modeling and processing of nonstationary signals remains an important yet challenging problem. In the past, the most effective approach for processing these signals has been statistical modeling. Statistical models can effectively encode domain knowledge and lead to principled algorithms for the fundamental tasks of enhancement, detection, and classification. However, the performance of statistical models can be limited because they inherently make assumptions about the distribution of the data. Deep neural networks, in contrast, have recently outperformed state-of-the-art statistical models of nonstationary signals. Deep neural networks are completely data-driven, and learn to set their parameters by training on large datasets that are assumed to match the distribution of the data.
520
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This dissertation follows two approaches for improving modeling and processing of nonstationary signals. The first approach examines conventional model assumptions and suggests improvements that lead to improved performance for processing nonstationary signals. Specifically, noncircular distributions of the complex-valued short-time Fourier transform are shown to improve detection of realistic nonstationary signals. Then the parameterization of a recently-proposed recurrent neural network for processing nonstationary signals is reexamined. By using an optimization method that preserves the capacity of the recurrence matrix, superior performance is achieved on a battery of benchmarks that test the ability of recurrent neural networks to process nonstationary signals.
520
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The second approach uses the recently-proposed framework of deep unfolding, which provides a principled means of transforming statistical model inference algorithms into deep networks. This dissertation expands the deep unfolding framework specifically for nonstationary signals. Using this framework, a model-based explanation is provided for state-of-the-art recurrent neural architectures, including gated recurrent unit and unitary recurrent neural networks. Additionally, deep unfolding results in deep network architectures that arise in principled ways from statistical model assumptions. This statistical model foundation provides initializations for the unfolded networks, which lead to better generalization, faster training, and competitive or superior performance on a variety of tasks, including single- and multichannel acoustic source separation and classification of acoustic signals.
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Electronic reproduction.
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Ann Arbor, Mich. :
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ProQuest,
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2018
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Mode of access: World Wide Web
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Electrical engineering.
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596380
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Artificial intelligence.
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ProQuest Information and Learning Co.
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University of Washington.
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http://pqdd.sinica.edu.tw/twdaoapp/servlet/advanced?query=10624410
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click for full text (PQDT)
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