Probability for Deep Learning Quantum: A Many-Sorted Algebra View
暫譯: 深度學習的機率:多重排序代數觀點

Giardina, Charles R.

  • 出版商: Morgan Kaufmann
  • 出版日期: 2025-01-22
  • 售價: $6,440
  • 貴賓價: 9.5$6,118
  • 語言: 英文
  • 頁數: 362
  • 裝訂: Quality Paper - also called trade paper
  • ISBN: 0443248346
  • ISBN-13: 9780443248344
  • 相關分類: DeepLearning
  • 海外代購書籍(需單獨結帳)

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商品描述

Probability for Deep Learning Quantum provides readers with the first book to address probabilistic methods in the deep learning environment and the quantum technological area simultaneously, by using a common platform: the Many-Sorted Algebra (MSA) view. While machine learning is created with a foundation of probability, probability is at the heart of quantum physics as well. It is the cornerstone in quantum applications. These applications include quantum measuring, quantum information theory, quantum communication theory, quantum sensing, quantum signal processing, quantum computing, quantum cryptography, and quantum machine learning. Although some of the probabilistic methods differ in machine learning disciplines from those in the quantum technologies, many techniques are very similar.

Probability is introduced in the text rigorously, in Komogorov's vision. It is however, slightly modified by developing the theory in a Many-Sorted Algebra setting. This algebraic construct is also used in showing the shared structures underlying much of both machine learning and quantum theory. Both deep learning and quantum technologies have several probabilistic and stochastic methods in common. These methods are described and illustrated using numerous examples within the text. Concepts in entropy are provided from a Shannon as well as a von-Neumann view. Singular value decomposition is applied in machine learning as a basic tool and presented in the Schmidt decomposition. Besides the in-common methods, Born's rule as well as positive operator valued measures are described and illustrated, along with quasi-probabilities. Author Charles R. Giardina provides clear and concise explanations, accompanied by insightful and thought-provoking visualizations, to deepen your understanding and enable you to apply the concepts to real-world scenarios.

商品描述(中文翻譯)

《深度學習量子概率》為讀者提供了第一本同時探討深度學習環境和量子技術領域中的概率方法的書籍,並使用一個共同的平台:多重排序代數(Many-Sorted Algebra, MSA)視角。機器學習是以概率為基礎建立的,而概率也是量子物理的核心。它是量子應用的基石。這些應用包括量子測量、量子信息理論、量子通信理論、量子感測、量子信號處理、量子計算、量子密碼學和量子機器學習。雖然某些機器學習領域中的概率方法與量子技術中的方法有所不同,但許多技術是非常相似的。

文本中嚴謹地引入了概率,遵循了科莫戈羅夫(Komogorov)的視角。然而,通過在多重排序代數的背景下發展理論,這一概念略有修改。這種代數結構也用於展示機器學習和量子理論之間的共同結構。深度學習和量子技術在多個概率和隨機方法上有許多共同之處。這些方法在文本中通過大量示例進行描述和說明。熵的概念從香農(Shannon)和馮·諾依曼(von Neumann)的視角提供。奇異值分解作為機器學習中的基本工具,並在施密特分解中呈現。除了共同的方法外,還描述和說明了玻恩法則(Born's rule)以及正算子值測度(positive operator valued measures),並介紹了準概率(quasi-probabilities)。作者查爾斯·R·吉亞爾迪納(Charles R. Giardina)提供了清晰而簡潔的解釋,並配以深刻且引人深思的視覺化,幫助您加深理解並能將這些概念應用於現實場景中。