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Main Authors: Lu, Qihong, Nguyen, Tan T., Zhang, Qiong, Hasson, Uri, Griffiths, Thomas L., Zacks, Jeffrey M., Gershman, Samuel J., Norman, Kenneth A.
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2312.08519
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author Lu, Qihong
Nguyen, Tan T.
Zhang, Qiong
Hasson, Uri
Griffiths, Thomas L.
Zacks, Jeffrey M.
Gershman, Samuel J.
Norman, Kenneth A.
author_facet Lu, Qihong
Nguyen, Tan T.
Zhang, Qiong
Hasson, Uri
Griffiths, Thomas L.
Zacks, Jeffrey M.
Gershman, Samuel J.
Norman, Kenneth A.
contents It has been proposed that, when processing a stream of events, humans divide their experiences in terms of inferred latent causes (LCs) to support context-dependent learning. However, when shared structure is present across contexts, it is still unclear how the "splitting" of LCs and learning of shared structure can be simultaneously achieved. Here, we present the Latent Cause Network (LCNet), a neural network model of LC inference. Through learning, it naturally stores structure that is shared across tasks in the network weights. Additionally, it represents context-specific structure using a context module, controlled by a Bayesian nonparametric inference algorithm, which assigns a unique context vector for each inferred LC. Across three simulations, we found that LCNet could 1) extract shared structure across LCs in a function learning task while avoiding catastrophic interference, 2) capture human data on curriculum effects in schema learning, and 3) infer the underlying event structure when processing naturalistic videos of daily events. Overall, these results demonstrate a computationally feasible approach to reconciling shared structure and context-specific structure in a model of LCs that is scalable from laboratory experiment settings to naturalistic settings.
format Preprint
id arxiv_https___arxiv_org_abs_2312_08519
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Reconciling Shared versus Context-Specific Information in a Neural Network Model of Latent Causes
Lu, Qihong
Nguyen, Tan T.
Zhang, Qiong
Hasson, Uri
Griffiths, Thomas L.
Zacks, Jeffrey M.
Gershman, Samuel J.
Norman, Kenneth A.
Neurons and Cognition
Artificial Intelligence
It has been proposed that, when processing a stream of events, humans divide their experiences in terms of inferred latent causes (LCs) to support context-dependent learning. However, when shared structure is present across contexts, it is still unclear how the "splitting" of LCs and learning of shared structure can be simultaneously achieved. Here, we present the Latent Cause Network (LCNet), a neural network model of LC inference. Through learning, it naturally stores structure that is shared across tasks in the network weights. Additionally, it represents context-specific structure using a context module, controlled by a Bayesian nonparametric inference algorithm, which assigns a unique context vector for each inferred LC. Across three simulations, we found that LCNet could 1) extract shared structure across LCs in a function learning task while avoiding catastrophic interference, 2) capture human data on curriculum effects in schema learning, and 3) infer the underlying event structure when processing naturalistic videos of daily events. Overall, these results demonstrate a computationally feasible approach to reconciling shared structure and context-specific structure in a model of LCs that is scalable from laboratory experiment settings to naturalistic settings.
title Reconciling Shared versus Context-Specific Information in a Neural Network Model of Latent Causes
topic Neurons and Cognition
Artificial Intelligence
url https://arxiv.org/abs/2312.08519