Müller Jan Saputra, Vidaurre Carmen, Schreuder Martijn, Meinecke Frank C, von Bünau Paul, Müller Klaus-Robert
Machine Learning Group, TU Berlin, Berlin, Germany.
J Neural Eng. 2017 Jun;14(3):036005. doi: 10.1088/1741-2552/aa620b. Epub 2017 Feb 22.
We present the first generic theoretical formulation of the co-adaptive learning problem and give a simple example of two interacting linear learning systems, a human and a machine.
After the description of the training protocol of the two learning systems, we define a simple linear model where the two learning agents are coupled by a joint loss function. The simplicity of the model allows us to find learning rules for both human and machine that permit computing theoretical simulations.
As seen in simulations, an astonishingly rich structure is found for this eco-system of learners. While the co-adaptive learners are shown to easily stall or get out of sync for some parameter settings, we can find a broad sweet spot of parameters where the learning system can converge quickly. It is defined by mid-range learning rates on the side of the learning machine, quite independent of the human in the loop. Despite its simplistic assumptions the theoretical study could be confirmed by a real-world experimental study where human and machine co-adapt to perform cursor control under distortion. Also in this practical setting the mid-range learning rates yield the best performance and behavioral ratings.
The results presented in this mathematical study allow the computation of simple theoretical simulations and performance of real experimental paradigms. Additionally, they are nicely in line with previous results in the BCI literature.
我们提出了协同自适应学习问题的首个通用理论公式,并给出了两个人与机器相互作用的线性学习系统的简单示例。
在描述了这两个学习系统的训练协议后,我们定义了一个简单的线性模型,其中两个学习主体通过联合损失函数耦合。该模型的简单性使我们能够为人和机器找到允许进行理论模拟计算的学习规则。
如模拟所示,在这个学习者生态系统中发现了惊人的丰富结构。虽然协同自适应学习者在某些参数设置下容易停滞或失去同步,但我们可以找到一个广泛的参数最佳点,学习系统可以在该点快速收敛。它由学习机器一侧的中等学习率定义,与回路中的人相当独立。尽管其假设简单,但该理论研究可以通过一项实际实验研究得到证实,在该研究中,人和机器协同自适应以在失真情况下执行光标控制。同样在这种实际设置中,中等学习率产生了最佳性能和行为评级。
这项数学研究中呈现的结果允许进行简单理论模拟的计算以及实际实验范式的执行。此外,它们与脑机接口文献中的先前结果非常一致。