Bayesian Field Theory

简介:
向传统数学家询问掷硬币的可能结果,他会回答说,没有证据可以作为这种预测的基础。询问贝叶斯,他将检查硬币,得出结论,它可能没有被篡改,并预测一千次抛掷中的500头; 然后将使用后续实验来完善此预测。换句话说,贝叶斯方法允许在测试假设时使用先验知识。
长期以来,数学家和统计学家,贝叶斯方法在这本开创性的书中应用于尖端物理学的问题。Joerg Lemm为在神经网络,人工智能和量子理论中的反问题等领域工作的物理学家提供了贝叶斯分析的实际示例。
本书还包括非参数密度估计问题,包括作为特殊情况的非参数回归和模式识别。贝叶斯场论发人深省,肯定会引起争议,它将引起物理学家以及使用贝叶斯方法的领域迅速增长的其他专家的兴趣。
英文简介:
Ask a traditional mathematician the likely outcome of a coin-toss, and he will reply that no evidence exists on which to base such a prediction. Ask a Bayesian, and he will examine the coin, conclude that it was probably not tampered with, and predict five hundred heads in a thousand tosses; a subsequent experiment would then be used to refine this prediction. The Bayesian approach, in other words, permits the use of prior knowledge when testing a hypothesis.
Long the province of mathematicians and statisticians, Bayesian methods are applied in this ground-breaking book to problems in cutting-edge physics. Joerg Lemm offers practical examples of Bayesian analysis for the physicist working in such areas as neural networks, artificial intelligence, and inverse problems in quantum theory.
The book also includes nonparametric density estimation problems, including, as special cases, nonparametric regression and pattern recognition. Thought-provoking and sure to be controversial, Bayesian Field Theory will be of interest to physicists as well as to other specialists in the rapidly growing number of fields that make use of Bayesian methods.
- 书名
- Bayesian Field Theory
- 译名
- 贝叶斯场论
- 语言
- 英语
- 年份
- 2000
- 页数
- 200页
- 大小
- 1.71 MB
- 标签
- Bayesian Method
- 机器学习
- 下载
Bayesian Field Theory.pdf
- 密码
- 65536
最后更新:2025-04-12 23:54:39
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