Learning from Pseudo-Randomness With an Artificial Neural Network - Does God Play Pseudo-Dice?

01/05/2018
by   Fenglei Fan, et al.
0

Inspired by the fact that the neural network, as the mainstream for machine learning, has brought successes in many application areas, here we propose to use this approach for decoding hidden correlation among pseudo-random data and predicting events accordingly. With a simple neural network structure and a typical training procedure, we demonstrate the learning and prediction power of the neural network in extremely random environment. Finally, we postulate that the high sensitivity and efficiency of the neural network may allow to critically test if there could be any fundamental difference between quantum randomness and pseudo randomness, which is equivalent to the question: Does God play dice?

READ FULL TEXT

page 2

page 5

research
08/30/2021

On the effects of biased quantum random numbers on the initialization of artificial neural networks

Recent advances in practical quantum computing have led to a variety of ...
research
10/20/2018

Testing Randomness in Quantum Mechanics

Pseudo-random number generators are widely used in many branches of scie...
research
08/08/2020

Quantum algorithmic randomness

Quantum Martin-Löf randomness (q-MLR) for infinite qubit sequences was i...
research
08/01/2012

Artificial Neural Network Based Prediction of Optimal Pseudo-Damping and Meta-Damping in Oscillatory Fractional Order Dynamical Systems

This paper investigates typical behaviors like damped oscillations in fr...
research
09/11/2023

A quantum tug of war between randomness and symmetries on homogeneous spaces

We explore the interplay between symmetry and randomness in quantum info...
research
02/24/2016

On Study of the Binarized Deep Neural Network for Image Classification

Recently, the deep neural network (derived from the artificial neural ne...
research
06/21/2019

Power and limitations of conformal martingales

This paper, accompanying my poster at ISIPTA 2019 (5 July 2019), poses t...

Please sign up or login with your details

Forgot password? Click here to reset