Current Deep Network (DN) visualization and interpretability methods rely heavily on data space visualizations such as scoring which dimensions of the data are responsible for their associated prediction or generating new data features or samples that best match a given DN unit or representation. In this paper, we go one step further by developing the first provably exact method for computing the geometry of a DN's mapping - including its decision boundary - over a specified region of the data space. By leveraging the theory of Continuous Piece-Wise Linear (CPWL) spline DNs, SplineCam exactly computes a DNs geometry without resorting to approximations such as sampling or architecture simplification. SplineCam applies to any DN architecture based on CPWL nonlinearities, including (leaky-)ReLU, absolute value, maxout, and max-pooling and can also be applied to regression DNs such as implicit neural representations. Beyond decision boundary visualization and characterization, SplineCam enables one to compare architectures, measure generalizability and sample from the decision boundary on or off the manifold. Project Website: bit.ly/splinecam.
翻译:目前深网络(DN)的可视化和可解释方法在很大程度上依赖于数据空间可视化方法,例如,评分数据的相关预测或生成与某一 DN 单位或表示方式最匹配的新数据特征或样本,数据维度由哪些维度负责相关预测或产生新的数据特征或样本。在本文件中,我们进一步一步,开发第一个可辨别的确切方法,用于计算数据空间特定区域DN绘图的几何(包括其决定边界),包括数据空间的确定边界。通过利用持续碎片线(CPWL)样条纹DN的理论,SplineCam精确地计算DN的几何学,而不采用取样或结构简化等近似法。SplineCam适用于基于CPWL非线性的任何 DN结构,包括(leaky-)ReU、绝对值、最大值和最大集合,还可以用于回归DN,如隐含的神经表示。除了决定边界的可视化和定性外,SplineCam使一个人能够比较结构、测量图象和从决定边界上或外的普通性和抽样。网站:bly。</s>