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

07/06/2022
by   Mohamed Alaskandarani, et al.
0

Developing new ways to estimate probabilities can be valuable for science, statistics, and engineering. By considering the information content of different output patterns, recent work invoking algorithmic information theory 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.

READ FULL TEXT
research
12/22/2021

Algorithmic Probability of Large Datasets and the Simplicity Bubble Problem in Machine Learning

When mining large datasets in order to predict new data, limitations of ...
research
05/10/2019

Low-Complexity Tilings of the Plane

A two-dimensional configuration is a coloring of the infinite grid Z^2 w...
research
09/06/2019

2-Local Hamiltonian with Low Complexity is QCMA

We prove that 2-Local Hamiltonian (2-LH) with Low Complexity problem is ...
research
12/14/2022

Multiclass classification utilising an estimated algorithmic probability prior

Methods of pattern recognition and machine learning are applied extensiv...
research
04/21/2023

The simplicity bubble effect as a zemblanitous phenomenon in learning systems

The ubiquity of Big Data and machine learning in society evinces the nee...
research
09/14/2015

Natural scene statistics mediate the perception of image complexity

Humans are sensitive to complexity and regularity in patterns. The subje...
research
05/13/2021

Distilling BERT for low complexity network training

This paper studies the efficiency of transferring BERT learnings to low ...

Please sign up or login with your details

Forgot password? Click here to reset