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首页> 外文期刊>PLoS Computational Biology >Finding the balance between model complexity and performance: Using ventral striatal oscillations to classify feeding behavior in rats
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Finding the balance between model complexity and performance: Using ventral striatal oscillations to classify feeding behavior in rats

机译:在模型复杂性和性能之间找到平衡:使用腹侧纹状体振荡对大鼠的进食行为进行分类

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摘要

Author summary As neuropsychiatry begins to leverage the power of computational methods to understand disease states and to develop better therapies, it is vital that we acknowledge the trade-offs between model complexity and performance. We show that computational methods can elucidate a neural signature of feeding behavior and we show how these methods could be used to discover neural patterns related to other behaviors and reveal new potential therapeutic targets. Further, our results help to contextualize both the limitations and potential of applying computational methods to neuropsychiatry by showing how changing the data being used to train predictive models (e.g., population vs. individual data) can have a large impact on how model performance generalizes across time, internal states, and individuals.
机译:作者摘要随着神经精神病学开始利用计算方法的功能来理解疾病状态并开发更好的疗法,至关重要的是,我们必须承认模型复杂性和性能之间的权衡。我们展示了计算方法可以阐明进食行为的神经特征,并且展示了如何使用这些方法来发现与其他行为有关的神经模式并揭示新的潜在治疗靶标。此外,我们的结果通过展示如何更改用于训练预测模型的数据(例如,人口数据与个人数据)如何对模型性能在整个环境中的概括产生重大影响,有助于将计算方法应用于神经精神病学的局限性和潜力进行情境化。时间,内部状态和个人。

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