Department of experimental psychology, Ghent University, Belgium.
Department of experimental psychology, Ghent University, Belgium.
Neural Netw. 2022 Feb;146:256-271. doi: 10.1016/j.neunet.2021.11.030. Epub 2021 Dec 2.
Human adaptive behavior requires continually learning and performing a wide variety of tasks, often with very little practice. To accomplish this, it is crucial to separate neural representations of different tasks in order to avoid interference. At the same time, sharing neural representations supports generalization and allows faster learning. Therefore, a crucial challenge is to find an optimal balance between shared versus separated representations. Typically, models of human cognition employ top-down modulatory signals to separate task representations, but there exist surprisingly little systematic computational investigations of how such modulation is best implemented. We identify and systematically evaluate two crucial features of modulatory signals. First, top-down input can be processed in an additive or multiplicative manner. Second, the modulatory signals can be adaptive (learned) or non-adaptive (random). We cross these two features, resulting in four modulation networks which are tested on a variety of input datasets and tasks with different degrees of stimulus-action mapping overlap. The multiplicative adaptive modulation network outperforms all other networks in terms of accuracy. Moreover, this network develops hidden units that optimally share representations between tasks. Specifically, different than the binary approach of currently popular latent state models, it exploits partial overlap between tasks.
人类的适应行为需要不断地学习和执行各种各样的任务,通常只有很少的实践机会。为了实现这一目标,将不同任务的神经表示分开以避免干扰至关重要。同时,共享神经表示支持泛化并允许更快地学习。因此,一个关键的挑战是在共享与分离表示之间找到最佳平衡。通常,人类认知模型采用自上而下的调制信号来分离任务表示,但对于这种调制如何最佳实现的系统计算研究却很少。我们确定并系统地评估了调制信号的两个关键特征。首先,自上而下的输入可以以加性或乘法方式进行处理。其次,调制信号可以是自适应的(可学习的)或非自适应的(随机的)。我们交叉这两个特征,得到四个调制网络,在具有不同刺激-动作映射重叠程度的各种输入数据集和任务上进行测试。乘法自适应调制网络在准确性方面优于所有其他网络。此外,该网络还开发了隐藏单元,在任务之间最佳地共享表示。具体来说,与当前流行的潜在状态模型的二进制方法不同,它利用了任务之间的部分重叠。