Belief dynamics extraction.

Arun Kumar, Zhengwei Wu, Xaq Pitkow, Paul Schrater
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Abstract

Animal behavior is not driven simply by its current observations, but is strongly influenced by internal states. Estimating the structure of these internal states is crucial for understanding the neural basis of behavior. In principle, internal states can be estimated by inverting behavior models, as in inverse model-based Reinforcement Learning. However, this requires careful parameterization and risks model-mismatch to the animal. Here we take a data-driven approach to infer latent states directly from observations of behavior, using a partially observable switching semi-Markov process. This process has two elements critical for capturing animal behavior: it captures non-exponential distribution of times between observations, and transitions between latent states depend on the animal's actions, features that require more complex non-markovian models to represent. To demonstrate the utility of our approach, we apply it to the observations of a simulated optimal agent performing a foraging task, and find that latent dynamics extracted by the model has correspondences with the belief dynamics of the agent. Finally, we apply our model to identify latent states in the behaviors of monkey performing a foraging task, and find clusters of latent states that identify periods of time consistent with expectant waiting. This data-driven behavioral model will be valuable for inferring latent cognitive states, and thereby for measuring neural representations of those states.

Abstract Image

Abstract Image

Abstract Image

信念动力学提取。
动物的行为不是简单地由当前的观察所驱动的,而是受到内部状态的强烈影响。估计这些内部状态的结构对于理解行为的神经基础至关重要。原则上,内部状态可以通过反转行为模型来估计,就像基于逆模型的强化学习一样。然而,这需要仔细的参数化,并且存在与动物模型不匹配的风险。在这里,我们采用数据驱动的方法,使用部分可观察的切换半马尔可夫过程,直接从行为观察推断潜在状态。这个过程对于捕捉动物行为有两个至关重要的因素:它捕捉观察之间的非指数时间分布,以及依赖于动物行为的潜在状态之间的转换,这些特征需要更复杂的非马尔可夫模型来表示。为了证明我们的方法的实用性,我们将其应用于模拟最优智能体执行觅食任务的观察,并发现该模型提取的潜在动力学与智能体的信念动力学具有对应关系。最后,我们应用我们的模型来识别觅食任务中猴子行为的潜在状态,并找到识别与期待等待一致的时间段的潜在状态簇。这种数据驱动的行为模型对于推断潜在的认知状态,从而测量这些状态的神经表征将是有价值的。
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