Mice in a labyrinth show rapid learning, sudden insight, and efficient exploration
Animals learn certain complex tasks remarkably fast, sometimes after a single experience. What behavioral algorithms support this efficiency? Many contemporary studies based on two-alternative-forced-choice (2AFC) tasks observe only slow or incomplete learning. As an alternative, we study the uncons...
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doaj-9ccd94663c0945028518711b229595582021-07-21T13:37:33ZengeLife Sciences Publications LtdeLife2050-084X2021-07-011010.7554/eLife.66175Mice in a labyrinth show rapid learning, sudden insight, and efficient explorationMatthew Rosenberg0Tony Zhang1https://orcid.org/0000-0002-5198-499XPietro Perona2Markus Meister3https://orcid.org/0000-0003-2136-6506Division of Biology and Biological Engineering, California Institute of Technology, Pasadena, United StatesDivision of Biology and Biological Engineering, California Institute of Technology, Pasadena, United StatesDivision of Engineering and Applied Science, California Institute of Technology, Pasadena, United StatesDivision of Biology and Biological Engineering, California Institute of Technology, Pasadena, United StatesAnimals learn certain complex tasks remarkably fast, sometimes after a single experience. What behavioral algorithms support this efficiency? Many contemporary studies based on two-alternative-forced-choice (2AFC) tasks observe only slow or incomplete learning. As an alternative, we study the unconstrained behavior of mice in a complex labyrinth and measure the dynamics of learning and the behaviors that enable it. A mouse in the labyrinth makes ~2000 navigation decisions per hour. The animal explores the maze, quickly discovers the location of a reward, and executes correct 10-bit choices after only 10 reward experiences — a learning rate 1000-fold higher than in 2AFC experiments. Many mice improve discontinuously from one minute to the next, suggesting moments of sudden insight about the structure of the labyrinth. The underlying search algorithm does not require a global memory of places visited and is largely explained by purely local turning rules.https://elifesciences.org/articles/66175behaviorfew-shot learningnavigationdecision-makingpredictive modelscognitive map |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Matthew Rosenberg Tony Zhang Pietro Perona Markus Meister |
spellingShingle |
Matthew Rosenberg Tony Zhang Pietro Perona Markus Meister Mice in a labyrinth show rapid learning, sudden insight, and efficient exploration eLife behavior few-shot learning navigation decision-making predictive models cognitive map |
author_facet |
Matthew Rosenberg Tony Zhang Pietro Perona Markus Meister |
author_sort |
Matthew Rosenberg |
title |
Mice in a labyrinth show rapid learning, sudden insight, and efficient exploration |
title_short |
Mice in a labyrinth show rapid learning, sudden insight, and efficient exploration |
title_full |
Mice in a labyrinth show rapid learning, sudden insight, and efficient exploration |
title_fullStr |
Mice in a labyrinth show rapid learning, sudden insight, and efficient exploration |
title_full_unstemmed |
Mice in a labyrinth show rapid learning, sudden insight, and efficient exploration |
title_sort |
mice in a labyrinth show rapid learning, sudden insight, and efficient exploration |
publisher |
eLife Sciences Publications Ltd |
series |
eLife |
issn |
2050-084X |
publishDate |
2021-07-01 |
description |
Animals learn certain complex tasks remarkably fast, sometimes after a single experience. What behavioral algorithms support this efficiency? Many contemporary studies based on two-alternative-forced-choice (2AFC) tasks observe only slow or incomplete learning. As an alternative, we study the unconstrained behavior of mice in a complex labyrinth and measure the dynamics of learning and the behaviors that enable it. A mouse in the labyrinth makes ~2000 navigation decisions per hour. The animal explores the maze, quickly discovers the location of a reward, and executes correct 10-bit choices after only 10 reward experiences — a learning rate 1000-fold higher than in 2AFC experiments. Many mice improve discontinuously from one minute to the next, suggesting moments of sudden insight about the structure of the labyrinth. The underlying search algorithm does not require a global memory of places visited and is largely explained by purely local turning rules. |
topic |
behavior few-shot learning navigation decision-making predictive models cognitive map |
url |
https://elifesciences.org/articles/66175 |
work_keys_str_mv |
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