论文标题

Deeprob-kit:用于深概率建模的Python库

DeeProb-kit: a Python Library for Deep Probabilistic Modelling

论文作者

Loconte, Lorenzo, Gala, Gennaro

论文摘要

Deeprob-kit是一个用python编写的统一库,由深层概率模型(DPM)组成,这些模型(dpms)是易于处理的概率且精确的表示形式的。单个库中DPM的代表性选择的可用性使得以直接的方式将它们组合在一起,这是当今深度学习研究中的常见实践。此外,它还包括有效实施的学习技术,推理例程,统计算法,并提供了高质量的完全证明的API。 Deeprob-kit的发展将有助于社区加速对DPM的研究,并标准化其评估,并更好地根据其表达性理解它们的关系。

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.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源