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The "Naturalistic Free Recall" dataset: four stories, hundreds of participants, and high-fidelity transcriptions
PsychologyScientific Data

The "Naturalistic Free Recall" dataset: four stories, hundreds of participants, and high-fidelity transcriptions

O. Raccah, P. Chen, et al.

Explore richly transcribed verbal recollections from 229 participants who listened to four spoken narratives and later recalled them in detail — with high-fidelity, time-stamped transcripts of original stories and recollections. The dataset includes automated scoring of memory performance and tools for NLP analyses of event structure, discourse, prediction error, and semantic features. This research was conducted by Omri Raccah, Phoebe Chen, Todd M. Gureckis, David Poeppel, and Vy A. Vo.... show more
Abstract
The "Naturalistic Free Recall" dataset provides transcribed verbal recollections of four spoken narratives collected from 229 participants. Each participant listened to two stories, varying in duration from approximately 8 to 13 minutes, recorded by different speakers. Subsequently, participants were tasked with verbally recalling the narrative content in as much detail as possible and in the correct order. The dataset includes high-fidelity, time-stamped text transcripts of both the original narratives and participants' recollections. To validate the dataset, we apply a previously published automated method to score memory performance for narrative content. Using this approach, we extend effects traditionally observed in classic list-learning paradigms. The analysis of narrative contents and its verbal recollection presents unique challenges compared to controlled list-learning experiments. To facilitate the use of these rich data by the community, we offer an overview of recent computational methods that can be used to annotate and evaluate key properties of narratives and their recollections. Using advancements in machine learning and natural language processing, these methods can help the community understand the role of event structure, discourse properties, prediction error, high-level semantic features (e.g., idioms, humor), and more. All experimental materials, code, and data are publicly available to facilitate new advances in understanding human memory.
Publisher
Scientific Data
Published On
Dec 03, 2024
Authors
Omri Raccah, Phoebe Chen, Todd M. Gureckis, David Poeppel, Vy A. Vo
Tags
naturalistic free recallnarrative memorytime-stamped transcriptsautomated memory scoringevent structureNLP & machine learningsemantic features
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