基于加权核的语义感知统计度量

S. Cresci, R. D. Pietro, M. Tesconi
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引用次数: 4

摘要

统计分布之间的距离度量被广泛用作聚合/简化潜在概率的有效方法,从而实现高级分析。在本文中,我们研究了这些度量可能产生的碰撞,以及基于核的缓解技术。详细地说,我们首先表明,碰撞函数(所谓的等曲线)的存在在度量和函数族(例如,高斯函数,重尾函数)中广泛存在。随后,我们提出了一种基于核的解决方案,用于增加距离度量和汇总统计,从而避免冲突并突出语义相关现象。这项研究得到了对我们的解决方案针对大量功能和指标的全面理论评估的支持,并通过将我们的解决方案应用于现有问题进行了实际评估。并对今后的研究方向进行了讨论。理论构建和取得的结果显示了我们的建议的合理性,可行性和质量,除了本身有趣之外,还为重点方向的进一步研究铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantically-Aware Statistical Metrics via Weighting Kernels
Distance metrics between statistical distributions are widely used as an efficient mean to aggregate/simplify the underlying probabilities, thus enabling high-level analyses. In this paper we investigate the collisions that can arise with such metrics, and a mitigation technique rooted on kernels. In detail, we first show that the existence of colliding functions (so-called iso-curves) is widespread across metrics and families of functions (e.g., gaussians, heavy-tailed). Later, we propose a solution based on kernels for augmenting distance metrics and summary statistics, thus avoiding collisions and highlighting semantically-relevant phenomena. This study is supported by a thorough theoretical evaluation of our solution against a large number of functions and metrics, complemented by a real-world evaluation carried out by applying our solution to an existing problem. Some further research venues are also discussed. The theoretical construction and the achieved results show the soundness, viability, and quality of our proposal that, other being interesting on its own, also paves the way for further research in the highlighted directions.
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