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?
外部データセット
40,000 instances made from the 1st to 40,007th digits of S'
T1 with 900,000 instances from the 100,000th to 1,000,006th digits
T2 with 9,000,000 instances from the 999,000th to 9,999,006th digits
10,000 instances from the 1st to 10,006th numbers for MT