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In his , Gvido reported the discovery of neurons that showed a neural correlation to the price fluctuations of the main cryptocurrencies, at the time the research was conducted. The neurobiologist used the public data set ’s to correlate the frequency of pulsation (impulses) of single neurons with the price of Bitcoin and Ether.
The dataset contained a burst of activity of 40.010 neurons recorded in 58 mice that were stationary and passively observing visual stimuli.The results were caused by “pointless correlations” - with the correlation between two signals that develop slowly over time, the chances of finding a significant correlation between them are much higher than those that do not.
Let's look at the graphs:(А) An example of the neurons from four different brain areas showed a strong correlation to the Bitcoin prices (the upper graph) and Ether (the lower graph) at the time of examination. The pulse rate and the price of the cryptocurrencies were fixed in 60-second intervals.
(В) , characterizing a linear relationship between the two quantities, was centered on zero but revealed a large proportion of neurons positively and negatively correlated with the cryptocurrency prices. The random number vector was also used for comparison.
(С) About 70% of neurons showed a significant correlation to the price of Bitcoin and Ether, while only 4.9% of neurons were correlated to a vector of random numbers, close to a false positive effect.
Thus, many neurons have shown a strong correlation between their pulsation rate and cryptocurrency prices (see graph A). At the same time, a random vector denoted a weak correlation to the pulsation rate (graph B). For an unusually high percentage of neurons, the correlation with the price of cryptocurrencies is significant: Bitcoin - 70.5%, Ether - 68,8%! At the same time, the correlation with a random vector was only present in 4.9% of neurons, which is within the expected level of error.And yet... Why such a large proportion of neurons have a significant correlation to the price of cryptocurrency?
The neurons in the brains of mice, of course, couldn’t encode it. And I think that mice (almost certainly) can’t read and interpret complex financial data😉. The explanation is that both the frequency of neuron impulses and the price of cryptocurrencies slowly evolve with time. The temporary constant of these auto-correlations was simply similar. Since the two correlated signals have this statistical property, the chances of finding a strong correlation between them are much higher than with the usual level of false-positive results. In addition, a large number of neurons in the data set allowed the observation of strong dependencies only by chance; due to temporary auto-correlations in both signals, conventional methods, such as multiple comparisons, could not reduce the false positive factor to acceptable levels.Let us not forget that the “pointless correlations” are a kind of trap, which is very difficult to avoid when studying such signals as neural activity.Most of the study warns that the potential mixing of meaningless correlations should be taken seriously. Otherwise, one might erroneously conclude that 70% of neurons in the mouse code correlate to cryptocurrency prices.