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Representational models: A common framework for understanding encoding pattern-component and representational-similarity analysis

机译:表示模型:用于理解编码模式分量和表示相似性分析的通用框架

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摘要

Representational models specify how activity patterns in populations of neurons (or, more generally, in multivariate brain-activity measurements) relate to sensory stimuli, motor responses, or cognitive processes. In an experimental context, representational models can be defined as hypotheses about the distribution of activity profiles across experimental conditions. Currently, three different methods are being used to test such hypotheses: encoding analysis, pattern component modeling (PCM), and representational similarity analysis (RSA). Here we develop a common mathematical framework for understanding the relationship of these three methods, which share one core commonality: all three evaluate the second moment of the distribution of activity profiles, which determines the representational geometry, and thus how well any feature can be decoded from population activity. Using simulated data for three different experimental designs, we compare the power of the methods to adjudicate between competing representational models. PCM implements a likelihood-ratio test and therefore provides the most powerful test if its assumptions hold. However, the other two approaches—when conducted appropriately—can perform similarly. In encoding analysis, the linear model needs to be appropriately regularized, which effectively imposes a prior on the activity profiles. With such a prior, an encoding model specifies a well-defined distribution of activity profiles. In RSA, the unequal variances and statistical dependencies of the dissimilarity estimates need to be taken into account to reach near-optimal power in inference. The three methods render different aspects of the information explicit (e.g. single-response tuning in encoding analysis and population-response representational dissimilarity in RSA) and have specific advantages in terms of computational demands, ease of use, and extensibility. The three methods are properly construed as complementary components of a single data-analytical toolkit for understanding neural representations on the basis of multivariate brain-activity data.
机译:代表性模型指定了神经元群体中的活动模式(或更广泛地说,在多变量脑活动测量中)如何与感觉刺激,运动反应或认知过程相关。在实验环境中,代表性模型可以定义为关于活动条件在整个实验条件下的分布的假设。当前,正在使用三种不同的方法来检验这些假设:编码分析,模式分量建模(PCM)和表示相似性分析(RSA)。在这里,我们开发了一个通用的数学框架来理解这三种方法之间的关系,它们共享一个核心共性:所有这三种方法都评估活动概况分布的第二时刻,这确定了表示几何形状,从而确定了任何特征的解码程度来自人口活动。使用针对三个不同实验设计的模拟数据,我们比较了在竞争性表示模型之间进行裁定的方法的功能。 PCM实现似然比检验,因此如果其假设成立,则可提供功能最强大的检验。但是,其他两种方法(在适当执行时)也可以执行类似的操作。在编码分析中,需要对线性模型进行适当的正则化,从而有效地将先验性强加给活动概况。有了这样的先验,编码模型就可以明确定义活动配置文件的分布。在RSA中,需要考虑相异性估计值的不相等方差和统计依存关系,以得出接近最佳的推断能力。这三种方法使信息的不同方面变得清晰(例如,编码分析中的单响应调整和RSA中的总体响应表示差异),并且在计算需求,易用性和可扩展性方面具有特定优势。可以正确地将这三种方法解释为单个数据分析工具包的补充组件,以基于多元脑活动数据来理解神经表示。

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