Evoked Potentials and GCP Event Data

Evoked potentials (EP) are measured in time-locked synchronization with repetitions of the same stimulus. The electrical measure in raw form is extremely noisy, reflecting not only responses to the imposed stimulus but also a large amount of normal, but unrelated activity. In the raw data no structu...

Full description

Bibliographic Details
Main Author: Roger D. Nelson
Format: Article
Language:English
Published: SSE 2020-06-01
Series:Journal of Scientific Exploration
Online Access:https://journalofscientificexploration.org/index.php/jse/article/view/1475
id doaj-98d2b54312b84a6bbb85bcbf16e3e4b4
record_format Article
spelling doaj-98d2b54312b84a6bbb85bcbf16e3e4b42020-11-25T03:14:20ZengSSEJournal of Scientific Exploration0892-33102020-06-01342Evoked Potentials and GCP Event DataRoger D. Nelson0Global Consciousness ProjectEvoked potentials (EP) are measured in time-locked synchronization with repetitions of the same stimulus. The electrical measure in raw form is extremely noisy, reflecting not only responses to the imposed stimulus but also a large amount of normal, but unrelated activity. In the raw data no structure related to the stimulus is apparent, so the process is repeated many times, yielding multiple epochs that can be averaged. Such “signal averaging” reduces or washes out random fluctuations while structured variation linked to the stimulus builds up over multiple samples. The resulting pattern usually shows a large excursion preceded and followed by smaller deviations with a typical time-course relative to the stimulus. The Global Consciousness Project (GCP) maintains a network of random number generators (RNG) running constantly at about 60 locations around the world, sending streams of 200-bit trials generated each second to be archived as parallel random sequences. Standard processing for most analyses computes a network variance measure for each second across the parallel data streams. This is the raw data used to calculate a figure of merit for each formal test of the GCP hypothesis: we predict non-random structure in data taken during “global events” that engage the attention of large numbers of people. The data are combined across all seconds of the event to give a representative Z-score, and typically displayed graphically as a cumulative deviation from expectation showing the history of the data sequence. For the present work, we treat the raw data in the same way measured electrical potentials from the brain are processed to reveal temporal patterns. In both cases the signal to noise ratio is very small, requiring signal averaging to reveal structure in what otherwise appears to be random data. Applying this model to analyze GCP data from events that show significant departures from expectation, we find patterns that look like those found in EP work. While this assessment is limited to visual comparisons, the degree of similarity is striking. It suggests that human brain activity in response to stimuli may be a useful model to guide further research addressing thhttps://journalofscientificexploration.org/index.php/jse/article/view/1475
collection DOAJ
language English
format Article
sources DOAJ
author Roger D. Nelson
spellingShingle Roger D. Nelson
Evoked Potentials and GCP Event Data
Journal of Scientific Exploration
author_facet Roger D. Nelson
author_sort Roger D. Nelson
title Evoked Potentials and GCP Event Data
title_short Evoked Potentials and GCP Event Data
title_full Evoked Potentials and GCP Event Data
title_fullStr Evoked Potentials and GCP Event Data
title_full_unstemmed Evoked Potentials and GCP Event Data
title_sort evoked potentials and gcp event data
publisher SSE
series Journal of Scientific Exploration
issn 0892-3310
publishDate 2020-06-01
description Evoked potentials (EP) are measured in time-locked synchronization with repetitions of the same stimulus. The electrical measure in raw form is extremely noisy, reflecting not only responses to the imposed stimulus but also a large amount of normal, but unrelated activity. In the raw data no structure related to the stimulus is apparent, so the process is repeated many times, yielding multiple epochs that can be averaged. Such “signal averaging” reduces or washes out random fluctuations while structured variation linked to the stimulus builds up over multiple samples. The resulting pattern usually shows a large excursion preceded and followed by smaller deviations with a typical time-course relative to the stimulus. The Global Consciousness Project (GCP) maintains a network of random number generators (RNG) running constantly at about 60 locations around the world, sending streams of 200-bit trials generated each second to be archived as parallel random sequences. Standard processing for most analyses computes a network variance measure for each second across the parallel data streams. This is the raw data used to calculate a figure of merit for each formal test of the GCP hypothesis: we predict non-random structure in data taken during “global events” that engage the attention of large numbers of people. The data are combined across all seconds of the event to give a representative Z-score, and typically displayed graphically as a cumulative deviation from expectation showing the history of the data sequence. For the present work, we treat the raw data in the same way measured electrical potentials from the brain are processed to reveal temporal patterns. In both cases the signal to noise ratio is very small, requiring signal averaging to reveal structure in what otherwise appears to be random data. Applying this model to analyze GCP data from events that show significant departures from expectation, we find patterns that look like those found in EP work. While this assessment is limited to visual comparisons, the degree of similarity is striking. It suggests that human brain activity in response to stimuli may be a useful model to guide further research addressing th
url https://journalofscientificexploration.org/index.php/jse/article/view/1475
work_keys_str_mv AT rogerdnelson evokedpotentialsandgcpeventdata
_version_ 1724643174126714880