Deep networks and decision forests (such as random forests and gradient boosted trees) are the leading machine learning methods for structured and tabular data, respectively. Many papers have empirically compared large numbers of classifiers on one or two different domains (e.g., on 100 different tabular data settings). However, a careful conceptual and empirical comparison of these two strategies using the most contemporary best practices has yet to be performed. Conceptually, we illustrate that both can be profitably viewed as "partition and vote" schemes. Specifically, the representation space that they both learn is a partitioning of feature space into a union of convex polytopes. For inference, each decides on the basis of votes from the activated nodes. This formulation allows for a unified basic understanding of the relationship between these methods. Empirically, we compare these two strategies on hundreds of tabular data settings, as well as several vision and auditory settings. Our focus is on datasets with at most 10,000 samples, which represent a large fraction of scientific and biomedical datasets. In general, we found forests to excel at tabular and structured data (vision and audition) with small sample sizes, whereas deep nets performed better on structured data with larger sample sizes. This suggests that further gains in both scenarios may be realized via further combining aspects of forests and networks. We will continue revising this technical report in the coming months with updated results.
翻译:深层网络和决策森林(如随机森林和梯度增殖树)是结构化和表格化数据的主要机械学习方法。许多论文对一个或两个不同领域(如100个不同的表格数据设置)的大量分类者进行了经验性比较。然而,对这两个战略使用最现代最佳做法的仔细的概念和实验性比较尚未进行。从概念上看,我们说明这两个战略都可以被视为“分割和投票”方案。具体地说,它们所学的表示空间是将地物空间分割成一个锥形多面体的联盟。为了推断,每个文件都根据激活节点的投票结果来决定这些方法之间的关系。这一表述使得能够对这些方法之间的关系有一个统一的基本理解。我们把这些两种战略用数百个表格数据设置以及几个远景和审计环境进行比较。我们的重点是最多10 000个样本的数据集,这些样本代表科学和生物医学数据集的一大部分。我们发现森林在表格和结构化数据(视图和试镜)中都具有优异性。我们发现,每个数据都根据被激活的中心节点的节点来决定。这种表述,这样就可以对这些方法进行统一的基本理解。我们可以通过深层网络进行更好的修改。我们将通过更深入的模型来将数据加以改进。我们用。