Parker Michael C, Jeynes Chris, Walker Stuart D
School of Computer Sciences & Electronic Engineering, University of Essex, Colchester CO4 3SQ, UK.
Independent Researcher, Tredegar NP22 4LP, UK.
Entropy (Basel). 2025 Mar 28;27(4):352. doi: 10.3390/e27040352.
We prove that the probability of " or ", denoted as ( or ), where and are events or hypotheses that may be recursively dependent, is given by a "Hyperbolic Sum Rule" (), which is relationally isomorphic to the hyperbolic tangent double-angle formula. We also prove that this HSR is Maximum Entropy (). Since this recursive dependency is commutative, it maintains the symmetry between the two events, while the recursiveness also represents temporal symmetry within the logical structure of the HSR. The possibility of recursive probabilities is excluded by the "Conventional Sum Rule" (), which we have also proved to be MaxEnt (with lower entropy than the HSR due to its narrower domain of applicability). The concatenation property of the HSR is exploited to enable analytical, consistent, and scalable calculations for multiple hypotheses. Although they are intrinsic to current artificial intelligence and machine learning applications, such calculations are not conveniently available for the CSR, moreover they are presently considered intractable for analytical study and methodological validation. Where, for two hypotheses, we have (|) > 0 and (|) > 0 together (where "|" means " given "), we show that {,} is independent {,} is recursively dependent. In general, recursive relations cannot be ruled out: the HSR should be used by default. Because the HSR is isomorphic to other physical quantities, including those of certain components that are important for digital signal processing, we also show that it is as reasonable to state that "" as it is to state that "" (which is now recognised as a truism of communications network engineering); probability is merely a mathematical construct. We relate this treatment to the physics of Quantitative Geometrical Thermodynamics, which is defined in complex hyperbolic (Minkowski) spacetime.
我们证明,“或”的概率,记为P(A或B),其中A和B是可能递归相关的事件或假设,由“双曲和规则”(HSR)给出,它在关系上与双曲正切二倍角公式同构。我们还证明,这个HSR是最大熵的(MaxEnt)。由于这种递归相关性是可交换的,它保持了两个事件之间的对称性,而递归性也代表了HSR逻辑结构内的时间对称性。递归概率的可能性被“传统和规则”(CSR)排除,我们也证明了CSR是最大熵的(由于其适用范围较窄,熵低于HSR)。利用HSR的级联属性,能够对多个假设进行解析、一致且可扩展的计算。尽管它们是当前人工智能和机器学习应用所固有的,但这种计算对于CSR来说并不容易获得,此外,目前它们被认为对于分析研究和方法验证来说是难以处理的。对于两个假设,当我们同时有P(B|A) > 0和P(A|B) > 0时(其中“|”表示“给定”),我们表明{A,B}是独立的⇔{A,B}是递归相关的。一般来说,不能排除递归关系:默认情况下应使用HSR。因为HSR与其他物理量同构,包括对数字信号处理很重要的某些分量的物理量,我们还表明陈述“P(A或B) = P(A) + P(B) - P(A)P(B)”与陈述“P(A或B) = (P(A) + P(B)) / (1 + P(A)P(B))”一样合理(这现在被认为是通信网络工程的一个不言而喻的事实);概率仅仅是一种数学构造。我们将这种处理与定量几何热力学的物理学联系起来,定量几何热力学是在复双曲(闵可夫斯基)时空中定义的。