预测情景记忆形成的机器学习方法

Hanlin Tang, Jedediah M. Singer, M. Ison, G. Pivazyan, Melissa Romaine, Elizabeth Meller, Victoria Perron, Marlise Arlellano, Gabriel Kreiman, A. Boulin, Rosa Frias, James Carroll, Sarah Dowcett
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引用次数: 3

摘要

情景记忆构成了我们回忆的本质,是由自传式经历和语境知识形成的。记忆丰富而细致,但同时也具有可塑性和不准确性。最终被记住的内容是在先前知识的背景下过滤传入的感官输入的结果。在这里,我们提出了一个问题,即典型的主观记忆构建过程是否可以通过完全基于内容信息的监督机器学习方法来预测。我们考虑了电影中的视听片段作为现实生活记忆形成的代理,并建立了一个定量模型来解释评估识别记忆的心理物理学数据。模型的输入包括视听信息(例如特定角色、物体、声音和声音的存在)、场景信息(例如位置、动作的存在或缺失)和情感效价信息。机器学习模型可以在单次试验中预测群体平均和个体受试者的记忆形成,仅使用刺激内容属性,准确率高达80%。这些结果提供了一个定量和预测模型,将感官知觉和情感属性与记忆形成联系起来。此外,研究结果表明,计算模型可以对涉及选择性过滤和主观解释的认知过程做出复杂的推断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A machine learning approach to predict episodic memory formation
Episodic memories constitute the essence of our recollections and are formed by autobiographical experiences and contextual knowledge. Memories are rich and detailed, yet at the same time they can be malleable and inaccurate. The contents that end up being remembered are the result of filtering incoming sensory inputs in the context of previous knowledge. Here we asked whether the quintessentially subjective process of memory construction could be predicted by a supervised machine learning approach based exclusively on content information. We considered audiovisual segments from a movie as a proxy for real-life memory formation and built a quantitative model to explain psychophysics data evaluating recognition memory. The inputs to the model included audiovisual information (e.g. presence of specific characters, objects, voices and sounds), scene information (e.g. location, presence or absence of action) and emotional valence information. The machine-learning model could predict memory formation in single trials both for group averages and individual subjects with an accuracy of up to 80% using solely stimulus content properties. These results provide a quantitative and predictive model that links sensory perception and emotional attributes to memory formation. Furthermore, the results demonstrate that a computational model can make sophisticated inferences about a cognitive process that involves selective filtering and subjective interpretation.
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