There is no convincing evidence that backpropagation is a biologically plausible mechanism, and further studies of alternative learning methods are needed. A novel online clustering algorithm is presented that can produce arbitrary shaped clusters from inputs in an unsupervised manner, and requires no prior knowledge of the number of clusters in the input data. This is achieved by finding correlated outputs from functions that capture commonly occurring input patterns. The algorithm can be deemed more biologically plausible than model optimization through backpropagation, although practical applicability may require additional research. However, the method yields satisfactory results on several toy datasets on a noteworthy range of hyperparameters.
翻译:没有令人信服的证据表明反向调整是一种生物学上可信的机制,需要进一步研究替代学习方法。 提出了一种新的在线群集算法,这种算法能够以不受监督的方式从投入中产生任意形状的群集,不需要事先知道输入数据中的群集数量。 找到反映常见输入模式的功能的相关产出可以实现这一点。 这种算法比通过反向调整优化模型更具有生物学上的合理性,尽管实际适用性可能需要额外研究。 但是,该方法在一些值得注意的超参数的玩具数据集上产生了令人满意的结果。