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Online probabilistic theory revision from examples with ProPPR

机译:通过ProPPR的示例进行在线概率理论修订

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Handling relational data streams has become a crucial task, given the availability of pervasive sensors and Internet-produced content, such as social networks and knowledge graphs. In a relational environment, this is a particularly challenging task, since one cannot assure that the streams of examples are independent along the iterations. Thus, most relational learning systems are still designed to learn only from closed batches of data. Furthermore, in case there is a previously acquired model, these systems either would discard it or assuming it as correct. In this work, we propose an online relational learning algorithm that can handle continuous, open-ended streams of relational examples as they arrive. We employ techniques of theory revision to take advantage of the previously acquired model as a starting point, by finding where it should be modified to cope with the new examples, and automatically update it. We rely on the Hoeffding's bound statistical theory to decide if the model must, in fact, be updated in accordance with the new examples. The proposed algorithm is built upon ProPPR statistical relational language, aiming at contemplating the uncertainty inherent to real data. Experimental results in social networks and entity co-reference datasets show the potential of the proposed approach compared to other relational learners.
机译:鉴于普及的传感器和Internet生产的内容(例如社交网络和知识图)的可用性,处理关系数据流已成为一项关键任务。在关系环境中,这是一项特别具有挑战性的任务,因为不能确保示例流在迭代中是独立的。因此,大多数关系学习系统仍被设计为仅从封闭的数据批次中学习。此外,在存在先前获取的模型的情况下,这些系统将丢弃它或将其假定为正确的。在这项工作中,我们提出了一种在线关系学习算法,该算法可以处理关系示例到达的连续,开放式的关系流。我们采用理论修正技术,以通过利用先前获取的模型作为起点,通过找到应该修改的地方以应对新的示例,并自动对其进行更新。我们依靠Hoeffding的绑定统计理论来确定该模型是否实际上必须根据新示例进行更新。所提出的算法建立在ProPPR统计关系语言的基础上,旨在考虑真实数据固有的不确定性。与其他关系学习者相比,社交网络和实体共同参考数据集中的实验结果表明了该方法的潜力。

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