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Stability Analysis of Learning Algorithms for Ontology Similarity Computation

机译:本体相似度计算学习算法的稳定性分析

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Ontology, as a useful tool, is widely applied in lots of areas such as social science, computer science, and medical science. Ontology concept similarity calculation is the key part of the algorithms in these applications. A recent approach is to make use of similarity between vertices on ontology graphs. It is, instead of pairwise computations, based on a function that maps the vertex set of an ontology graph to real numbers. In order to obtain this, the ranking learning problem plays an important and essential role, especiallyk-partite ranking algorithm, which is suitable for solving some ontology problems. A ranking function is usually used to map the vertices of an ontology graph to numbers and assign ranks of the vertices through their scores. Through studying a training sample, such a function can be learned. It contains a subset of vertices of the ontology graph. A good ranking function means small ranking mistakes and good stability. For ranking algorithms, which are in a well-stable state, we study generalization bounds via some concepts of algorithmic stability. We also find that kernel-based ranking algorithms stated as regularization schemes in reproducing kernel Hilbert spaces satisfy stability conditions and have great generalization abilities.
机译:本体作为一种有用的工具,已广泛应用于社会科学,计算机科学和医学等许多领域。本体概念相似度计算是这些应用中算法的关键部分。最近的方法是利用本体图上顶点之间的相似性。它不是基于成对计算,而是基于将本体图的顶点集映射为实数的函数。为此,排名学习问题起着至关重要的作用,尤其是k-partite排名算法,它适合于解决一些本体问题。排序功能通常用于将本体图的顶点映射到数字,并通过其分数分配顶点的等级。通过研究训练样本,可以学习这种功能。它包含本体图的顶点的子集。好的排序功能意味着小的排序错误和良好的稳定性。对于处于稳定状态的排序算法,我们通过一些算法稳定性的概念研究泛化边界。我们还发现,在重现内核希尔伯特空间中以正则化方案表示的基于内核的排序算法满足稳定性条件,并且具有很大的泛化能力。

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