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Mapping and Revising Markov Logic Networks for Transfer Learning

机译:映射和修订用于转移学习的马尔可夫逻辑网络

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摘要

Transfer learning addresses the problem of how to leverage knowledge acquired in a source domain to improve the accuracy and speed of learning in a related target domain. This paper considers transfer learning with Markov logic networks (MLNs), a powerful formalism for learning in relational domains. We present a complete MLN transfer system that first autonomously maps the predicates in the source MLN to the target domain and then revises the mapped structure to further improve its accuracy. Our results in several real-world domains demonstrate that our approach successfully reduces the amount of time and training data needed to learn an accurate model of a target domain over learning from scratch.
机译:转移学习解决了如何利用在源域中获取的知识来提高相关目标域中学习的准确性和速度的问题。本文考虑了使用马尔可夫逻辑网络(MLN)进行的转移学习,这是一种用于关系域学习的强大形式主义。我们提出了一个完整的MLN传输系统,该系统首先自动将源MLN中的谓词映射到目标域,然后修改映射的结构以进一步提高其准确性。我们在多个实际领域中的结果表明,通过从零开始学习,我们的方法成功减少了学习目标域的准确模型所需的时间和训练数据。

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