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Mathematics of Coordinated Inference: A Study of Generalized Hat Problems 2013 ed. [Kõva köide]

  • Formaat: Hardback, 109 pages, kõrgus x laius: 235x155 mm, kaal: 454 g, XI, 109 p., 1 Hardback
  • Sari: Developments in Mathematics 33
  • Ilmumisaeg: 28-Oct-2013
  • Kirjastus: Springer International Publishing AG
  • ISBN-10: 3319013327
  • ISBN-13: 9783319013329
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  • Formaat: Hardback, 109 pages, kõrgus x laius: 235x155 mm, kaal: 454 g, XI, 109 p., 1 Hardback
  • Sari: Developments in Mathematics 33
  • Ilmumisaeg: 28-Oct-2013
  • Kirjastus: Springer International Publishing AG
  • ISBN-10: 3319013327
  • ISBN-13: 9783319013329
A Study of Generalized Hat Problem.

Two prisoners are told that they will be brought to a room and seated so that each can see the other. Hats will be placed on their heads; each hat is either red or green. The two prisoners must simultaneously submit a guess of their own hat color, and they both go free if at least one of them guesses correctly. While no communication is allowed once the hats have been placed, they will, however, be allowed to have a strategy session before being brought to the room. Is there a strategy ensuring their release? The answer turns out to be yes, and this is the simplest non-trivial example of a “hat problem.”

This book deals with the question of how successfully one can predict the value of an arbitrary function at one or more points of its domain based on some knowledge of its values at other points. Topics range from hat problems that are accessible to everyone willing to think hard, to some advanced topics in set theory and infinitary combinatorics. For example, there is a method of predicting the valuef(a) of a function f mapping the reals to the reals, based only on knowledge off's values on the open interval (a – 1, a), and for every such function the prediction is incorrect only on a countable set that is nowhere dense.

The monograph progresses from topics requiring fewer prerequisites to those requiring more, with most of the text being accessible to any graduate student in mathematics. The broad range of readership includes researchers, postdocs, and graduate students in the fields of set theory, mathematical logic, and combinatorics. The hope is that this book will bring together mathematicians from different areas to think about set theory via a very broad array of coordinated inference problems.

Arvustused

From the book reviews:

The book presents, in a unified way, attractive topics in graph theory, topology, and set theory that all relate to the dilemma faced by Alice and Bob and others in hat problems. The first few chapters are of great general interest as they summarize hat problems that any mathematician can understand. The later chapters will be of interest to those well versed in set theory or certain aspects of point-set topology. (Stan Wagon, Mathematical Reviews, October, 2014)

1 Introduction
1(10)
1.1 Background
1(2)
1.2 Set-Theoretic Preliminaries
3(1)
1.3 Two Basic Negative Results
4(2)
1.4 One Basic Positive Result: The μ-Predictor
6(1)
1.5 A Preview of What Is to Come
7(4)
2 The Finite Setting
11(8)
2.1 Background
11(1)
2.2 Minimal Predictors
12(2)
2.3 Optimal Predictors
14(1)
2.4 The Role of the Tutte-Berge Formula
14(2)
2.5 A Variable Number of Hat Colors
16(1)
2.6 Variations on the Standard Hat Problem
17(1)
2.7 Open Questions
18(1)
3 The Denumerable Setting: Full Visibility
19(10)
3.1 Background
19(1)
3.2 The Gabay-O'Connor Theorem
20(1)
3.3 Lenstra's Theorem and Sequential Guessing
21(3)
3.4 The Role of the Axiom of Choice
24(2)
3.5 The Role of Square Bracket Partition Relations
26(1)
3.6 Open Questions
27(2)
4 The Denumerable Setting: One-Way Visibility
29(20)
4.1 Background
29(1)
4.2 Optimal and Minimal Predictors for Transitive Graphs
30(1)
4.3 Characterizing Graphs Yielding Finite-Error Predictors
31(2)
4.4 ZFC Results for the Parity Relation
33(1)
4.5 Independence Results for the Parity Relation
34(3)
4.6 The Role of P-Point and Ramsey Ultrafilters
37(3)
4.7 u-Predictors
40(4)
4.8 Blass's Evasion and Prediction Setting
44(2)
4.9 Open Questions
46(3)
5 Dual Hat Problems, Ideals, and the Uncountable
49(12)
5.1 Background
49(1)
5.2 Dual Hat Problems
50(1)
5.3 Hat Problems and Ideals
51(4)
5.4 The Role of Non-regular Ultrafilters
55(2)
5.5 A Hat Problem Equivalent to the GCH
57(2)
5.6 Open Questions
59(2)
6 Galvin's Setting: Neutral and Anonymous Predictors
61(10)
6.1 Background
61(2)
6.2 Applications to Logic and Set Theory
63(1)
6.3 Neutral and Anonymous Predictors
64(2)
6.4 Neutralizing Predictors
66(1)
6.5 Combining with Robustness
67(1)
6.6 Robust Neutral Predictors and the Axiom of Choice
68(3)
7 The Topological Setting
71(12)
7.1 Background
71(1)
7.2 The Scattered Sets Result
72(3)
7.3 Corollaries
75(1)
7.4 Guessing the Future
76(1)
7.5 The Philosophical Problem of Induction
77(1)
7.6 Proximity Schemes
78(3)
7.7 Anonymity in R
81(1)
7.8 Open Questions
82(1)
8 Universality of the μ-Predictor
83(10)
8.1 Background
83(1)
8.2 Scattered Sets
84(1)
8.3 Dynamics of Scattered-Error Predictors
85(2)
8.4 Getting an Ordering from a Predictor
87(1)
8.5 Visibility Graphs
88(2)
8.6 Variations on the μ-Predictor
90(1)
8.7 Results Without the Axiom of Choice
91(1)
8.8 Open Questions
92(1)
9 Generalizations and Galois-Tukey Connections
93(10)
9.1 Background
93(1)
9.2 Galois-Tukey Connections
94(2)
9.3 Two-Agent Problems and Morphisms
96(2)
9.4 Norms
98(1)
9.5 Applications of the Metaphor
98(1)
9.6 Scattered-Error Predictors
99(1)
9.7 Pseudo-scattered Sets
100(3)
Bibliography 103(4)
Index 107