Probability matching in perceptrons: Effects of conditional dependence and linear nonseparability.

Probability matching occurs when the behavior of an agent matches the likelihood of occurrence of events in the agent's environment. For instance, when artificial neural networks match probability, the activity in their output unit equals the past probability of reward in the presence of a stim...

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Main Authors: Michael R W Dawson, Maya Gupta
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5315326?pdf=render
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spelling doaj-890cfb3482144cc590c99bbefadb9d742020-11-25T01:30:48ZengPublic Library of Science (PLoS)PLoS ONE1932-62032017-01-01122e017243110.1371/journal.pone.0172431Probability matching in perceptrons: Effects of conditional dependence and linear nonseparability.Michael R W DawsonMaya GuptaProbability matching occurs when the behavior of an agent matches the likelihood of occurrence of events in the agent's environment. For instance, when artificial neural networks match probability, the activity in their output unit equals the past probability of reward in the presence of a stimulus. Our previous research demonstrated that simple artificial neural networks (perceptrons, which consist of a set of input units directly connected to a single output unit) learn to match probability when presented different cues in isolation. The current paper extends this research by showing that perceptrons can match probabilities when presented simultaneous cues, with each cue signaling different reward likelihoods. In our first simulation, we presented up to four different cues simultaneously; the likelihood of reward signaled by the presence of one cue was independent of the likelihood of reward signaled by other cues. Perceptrons learned to match reward probabilities by treating each cue as an independent source of information about the likelihood of reward. In a second simulation, we violated the independence between cues by making some reward probabilities depend upon cue interactions. We did so by basing reward probabilities on a logical combination (AND or XOR) of two of the four possible cues. We also varied the size of the reward associated with the logical combination. We discovered that this latter manipulation was a much better predictor of perceptron performance than was the logical structure of the interaction between cues. This indicates that when perceptrons learn to match probabilities, they do so by assuming that each signal of a reward is independent of any other; the best predictor of perceptron performance is a quantitative measure of the independence of these input signals, and not the logical structure of the problem being learned.http://europepmc.org/articles/PMC5315326?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Michael R W Dawson
Maya Gupta
spellingShingle Michael R W Dawson
Maya Gupta
Probability matching in perceptrons: Effects of conditional dependence and linear nonseparability.
PLoS ONE
author_facet Michael R W Dawson
Maya Gupta
author_sort Michael R W Dawson
title Probability matching in perceptrons: Effects of conditional dependence and linear nonseparability.
title_short Probability matching in perceptrons: Effects of conditional dependence and linear nonseparability.
title_full Probability matching in perceptrons: Effects of conditional dependence and linear nonseparability.
title_fullStr Probability matching in perceptrons: Effects of conditional dependence and linear nonseparability.
title_full_unstemmed Probability matching in perceptrons: Effects of conditional dependence and linear nonseparability.
title_sort probability matching in perceptrons: effects of conditional dependence and linear nonseparability.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2017-01-01
description Probability matching occurs when the behavior of an agent matches the likelihood of occurrence of events in the agent's environment. For instance, when artificial neural networks match probability, the activity in their output unit equals the past probability of reward in the presence of a stimulus. Our previous research demonstrated that simple artificial neural networks (perceptrons, which consist of a set of input units directly connected to a single output unit) learn to match probability when presented different cues in isolation. The current paper extends this research by showing that perceptrons can match probabilities when presented simultaneous cues, with each cue signaling different reward likelihoods. In our first simulation, we presented up to four different cues simultaneously; the likelihood of reward signaled by the presence of one cue was independent of the likelihood of reward signaled by other cues. Perceptrons learned to match reward probabilities by treating each cue as an independent source of information about the likelihood of reward. In a second simulation, we violated the independence between cues by making some reward probabilities depend upon cue interactions. We did so by basing reward probabilities on a logical combination (AND or XOR) of two of the four possible cues. We also varied the size of the reward associated with the logical combination. We discovered that this latter manipulation was a much better predictor of perceptron performance than was the logical structure of the interaction between cues. This indicates that when perceptrons learn to match probabilities, they do so by assuming that each signal of a reward is independent of any other; the best predictor of perceptron performance is a quantitative measure of the independence of these input signals, and not the logical structure of the problem being learned.
url http://europepmc.org/articles/PMC5315326?pdf=render
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AT mayagupta probabilitymatchinginperceptronseffectsofconditionaldependenceandlinearnonseparability
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