DeeProb-kit is a unified library written in Python consisting of a collection of deep probabilistic models (DPMs) that are tractable and exact representations for the modelled probability distributions. The availability of a representative selection of DPMs in a single library makes it possible to combine them in a straightforward manner, a common practice in deep learning research nowadays. In addition, it includes efficiently implemented learning techniques, inference routines, statistical algorithms, and provides high-quality fully-documented APIs. The development of DeeProb-kit will help the community to accelerate research on DPMs as well as to standardise their evaluation and better understand how they are related based on their expressivity.
翻译:DeeProb-Kit是用Python书写的统一图书馆,由一系列可移植和精确反映模型概率分布的深概率模型组成,在一个单一图书馆中提供有代表性的DPM选择,使得有可能以直截了当的方式将其结合起来,这是当今深层学习研究的共同做法,还包括高效应用的学习技巧、推论常规、统计算法,并提供高质量、有完整记录的API。DeeProb-Kit的开发将有助于社区加速对DPM的研究,使其评价标准化,并更好地了解基于其直观性如何相互联系。