# Developing artificial neural network tools for cognitive modeling

> **NIH NIH R21** · UNIVERSITY OF CALIFORNIA BERKELEY · 2024 · $187,763

## Abstract

Project Summary/Abstract
Mathematical modeling is an essential tool to study the brain, behavior and cognition. Computational cognitive
models state with simple mathematical equations how the brain may be manipulating information that supports
how humans and animals interpret the world around them, make choices and adapt to new environments or
events. Researchers can use computational cognitive models to quantitatively test the theories embedded in the
models, by comparing model predictions with behavioral and neural data. Models also often have meaningful
parameters that can be tuned to reﬂect how speciﬁc information is used, for example how much participants
weigh prospective gains vs. losses in decisions, how willing participants are to explore new information vs.
exploit the information they already have, or how conﬁdent they need to be before committing to a decision. In
the context of psychiatric and neuro-degenerative diseases, computational modelers can ask whether models ﬁt
patients' behavior/neural activity differently than healthy controls, thereby explaining impairments as a difference
in information processing; or whether they exhibit different parameters for the same models, showing different
weighing of information. Thus, computational modeling provides important quantitative tools to understand how
brain disease impacts behavior and cognition.
 However, such research requires statistical tools to quantitatively relate models to data - that is, to identify
which models and which parameters explain the data best. Existing tools mostly rely on computing the likelihood
of the data under the model, and are very powerful for a speciﬁc class of models. However, they leave out a
much broader class of models for which the likelihood is too complex to compute. This class of models includes
many simple and relevant models that embody reasonable theories of cognition, but these models are currently
unexplored, because researchers lack the tools required to relate them to data. The goal of this proposal is to
develop new tools for this class of models, using modern supervised machine learning techniques (with deep
neural networks) that bypass the need to compute the likelihood, but do not require advanced expertise in ap-
plied mathematics and are broadly generalizable to the whole class of models that are currently inaccessible to
existing techniques. Speciﬁcally, we will develop tools to 1) identify which of multiple models explain a partici-
pant's data better, 2) identify the value of model parameters that best explain a participant's data, and 3) infer
how the model variables generated the participant's behavior, enabling us to relate these variables to brain data.
 This research will vastly increase the potential reach of computational techniques in neuroscience, enabling
researchers to consider theories that are currently discarded for lack of tools. This is an important step toward
broadening our understanding of mental illness and bra...

## Key facts

- **NIH application ID:** 10813171
- **Project number:** 5R21MH132974-02
- **Recipient organization:** UNIVERSITY OF CALIFORNIA BERKELEY
- **Principal Investigator:** Anne G.E. Collins
- **Activity code:** R21 (R01, R21, SBIR, etc.)
- **Funding institute:** NIH
- **Fiscal year:** 2024
- **Award amount:** $187,763
- **Award type:** 5
- **Project period:** 2023-04-01 → 2026-03-31

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/10813171

## Citation

> US National Institutes of Health, RePORTER application 10813171, Developing artificial neural network tools for cognitive modeling (5R21MH132974-02). Retrieved via AI Analytics 2026-05-23 from https://api.ai-analytics.org/grant/nih/10813171. Licensed CC0.

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