论文标题
导航因果深度学习
Navigating causal deep learning
论文作者
论文摘要
因果深度学习(CDL)是在较大机器学习领域中的一个新的重要研究领域。使用CDL,研究人员的目标是在深度学习模型的极其灵活的表示空间中构建和编码因果知识。这样做将导致更加知识,健壮和一般的预测和推论 - 这很重要!但是,CDL仍处于起步阶段。例如,尚不清楚我们如何比较不同的方法,因为它们在输出中是如此不同,它们编码因果知识的方式,甚至是他们如何代表这一知识。这是一篇活泼的论文,它将珍珠因果关系阶梯之外的因果深度学习中的方法分类。我们在Pearl的梯子中完善了梯级,同时还添加了一个单独的维度,该维度分类了输入和表示的参数假设,并到达了因果深度学习地图。我们的地图涵盖了机器学习学科,例如监督学习,强化学习,生成建模及其他。我们的范式是一种帮助研究人员的工具:查找基准,比较方法,最重要的是:识别研究差距。通过这项工作,我们旨在构建有关因果深度学习的发表论文的雪崩。尽管有关该主题的论文每天都在发表,但我们的地图仍然固定。我们开放源地图供其他人认为合适的人使用:也许在相关作品部分提供指导,或者更好地强调论文的贡献。
Causal deep learning (CDL) is a new and important research area in the larger field of machine learning. With CDL, researchers aim to structure and encode causal knowledge in the extremely flexible representation space of deep learning models. Doing so will lead to more informed, robust, and general predictions and inference -- which is important! However, CDL is still in its infancy. For example, it is not clear how we ought to compare different methods as they are so different in their output, the way they encode causal knowledge, or even how they represent this knowledge. This is a living paper that categorises methods in causal deep learning beyond Pearl's ladder of causation. We refine the rungs in Pearl's ladder, while also adding a separate dimension that categorises the parametric assumptions of both input and representation, arriving at the map of causal deep learning. Our map covers machine learning disciplines such as supervised learning, reinforcement learning, generative modelling and beyond. Our paradigm is a tool which helps researchers to: find benchmarks, compare methods, and most importantly: identify research gaps. With this work we aim to structure the avalanche of papers being published on causal deep learning. While papers on the topic are being published daily, our map remains fixed. We open-source our map for others to use as they see fit: perhaps to offer guidance in a related works section, or to better highlight the contribution of their paper.