Low complexity, low probability patterns and consequences for algorithmic probability applications

Mohamed Alaskandarani, K. Dingle
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引用次数: 4

Abstract

Developing new ways to estimate probabilities can be valuable for science, statistics, engineering, and other fields. By considering the information content of different output patterns, recent work invoking algorithmic information theory inspired arguments has shown that a priori probability predictions based on pattern complexities can be made in a broad class of input-output maps. These algorithmic probability predictions do not depend on a detailed knowledge of how output patterns were produced, or historical statistical data. Although quantitatively fairly accurate, a main weakness of these predictions is that they are given as an upper bound on the probability of a pattern, but many low complexity, low probability patterns occur, for which the upper bound has little predictive value. Here, we study this low complexity, low probability phenomenon by looking at example maps, namely a finite state transducer, natural time series data, RNA molecule structures, and polynomial curves. Some mechanisms causing low complexity, low probability behaviour are identified, and we argue this behaviour should be assumed as a default in the real-world algorithmic probability studies. Additionally, we examine some applications of algorithmic probability and discuss some implications of low complexity, low probability patterns for several research areas including simplicity in physics and biology, a priori probability predictions, Solomonoff induction and Occam’s razor, machine learning, and password guessing.
低复杂性,低概率模式和算法概率应用的后果
开发估算概率的新方法对科学、统计、工程和其他领域都很有价值。通过考虑不同输出模式的信息内容,最近的工作调用算法信息理论启发的论点表明,基于模式复杂性的先验概率预测可以在广泛的输入-输出映射中进行。这些算法概率预测不依赖于如何产生输出模式的详细知识,也不依赖于历史统计数据。虽然在数量上相当准确,但这些预测的主要缺点是它们是作为模式概率的上界给出的,但是发生了许多低复杂性、低概率的模式,对于这些模式,上界几乎没有预测价值。在这里,我们通过查看示例图来研究这种低复杂性,低概率现象,即有限状态传感器,自然时间序列数据,RNA分子结构和多项式曲线。一些导致低复杂性,低概率行为的机制被确定,我们认为这种行为应该被假设为现实世界算法概率研究中的默认值。此外,我们还研究了算法概率的一些应用,并讨论了低复杂性、低概率模式对几个研究领域的影响,包括物理和生物学中的简单性、先验概率预测、所罗门诺夫归纳和奥卡姆剃刀、机器学习和密码猜测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
2.80
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