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Evolution of architectures for multitask neural networks

机译:多临时神经网络建筑的演变

摘要

Evolution and coevolution of neural networks via multitask learning is described. The foundation is (1) the original soft ordering, which uses a fixed architecture for the modules and a fixed routing (i.e. network topology) that is shared among all tasks. This architecture is then extended in two ways with CoDeepNEAT: (2) by coevolving the module architectures (CM), and (3) by coevolving both the module architectures and a single shared routing for all tasks using (CMSR). An alternative evolutionary process (4) keeps the module architecture fixed, but evolves a separate routing for each task during training (CTR). Finally, approaches (2) and (4) are combined into (5), where both modules and task routing are coevolved (CMTR).
机译:描述了通过多任务学习的神经网络的演化和参与。该基础是(1)原始软订购,它使用固定架构的模块和固定的路由(即网络拓扑)在所有任务中共享。然后,使用CodeepNeat以两种方式扩展此架构:(2)通过使用(CMSR)的所有任务共享模块架构和单个共享路由来协调模块架构(CM)和(3)。替代进化过程(4)保持模块架构固定,但在训练期间为每项任务提供单独的路由。最后,将方法(2)和(4)组合成(5),其中两个模块和任务路由都是共同的(CMTR)。

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