Submitted:
20 July 2024
Posted:
22 July 2024
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Abstract
Keywords:
1. Introduction
1.1. Probability in Science
1.2. Probability is Physical
1.3. Maximum Entropy
2. Analysis
2.1. The Conventional Sum Rule (I)
2.2. The Venn Diagram
2.3. Recursion: Chicken & Egg
2.4. The Conventional Sum Rule (II)
3. A general “Hyperbolic Sum Rule” (HSR)
3.1. Proving the HSR Theorem
3.2. Some Analytical and Numerical Comparisons
3.3. Concatenation Rules for Multiple Hypotheses
4. Discussion
4.1. Probability is Physical
4.2. Recursion
4.3. Two Distinct Sum Rules
5. Conclusions
Appendices: MaxEnt Properties of the Sum Rules for Probabilities
Acknowledgement:
Supplementary Materials
Appendix A: Maximum Entropy Criterion for the HSR
Appendix B: Inadmissible “MaxEnt” Sum Rules
Appendix C: Hyperbolic Sum Rule is MaxEnt
Appendix D: MaxEnt Treatment of HSR Featuring Multiple Hypotheses
D.1. ‘OR’ Treatment of Multiple Conditional Hypotheses
D.2. Generalisation of the Concatenated ”Hyperbolic Sum Rule” for Multiple Hypotheses
D.3. Sum Rule for Multiple Hypotheses with Multiple Conditionalities
D.4. Generalised Hyperbolic Sum Rule for Multiple Hypotheses
D.5. Maximum Entropy Analysis for “Hyperbolic Sum Rule” of Multiple Hypotheses
Appendix E: Conventional Sum Rule is MaxEnt
Appendix F: A Sum Rule for Finite and Infinite Impulse Response Filters
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