The Libra toolkit for probabilistic models

Daniel Lowd, Pedram Rooshenas
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引用次数: 30

Abstract

The Libra Toolkit is a collection of algorithms for learning and inference with discrete probabilistic models, including Bayesian networks, Markov networks, dependency networks, and sum-product networks. Compared to other toolkits, Libra places a greater emphasis on learning the structure of tractable models in which exact inference is efficient. It also includes a variety of algorithms for learning graphical models in which inference is potentially intractable, and for performing exact and approximate inference. Libra is released under a 2-clause BSD license to encourage broad use in academia and industry.
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Libra的概率模型工具包
Libra工具包是一组用于学习和推理离散概率模型的算法集合,包括贝叶斯网络、马尔可夫网络、依赖网络和和积网络。与其他工具包相比,Libra更强调学习可处理模型的结构,其中精确的推理是有效的。它还包括用于学习图形模型的各种算法,其中推理可能难以处理,以及用于执行精确和近似推理。Libra是在2条款BSD许可下发布的,以鼓励在学术界和工业界广泛使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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