信息学中离散数据点的连续描述:使用样条函数

Yu-xian Liu, R. Rousseau
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引用次数: 3

摘要

目的-本文旨在提出使用样条函数来描述和可视化离散信息数据。设计/方法论/方法-插值三次样条:是插值函数(它们通过给定的数据点);是三次多项式,即三次多项式;在数据点上有一阶和二阶导数,这意味着它们以平滑的方式连接数据点;满足一个趋向于减小曲率的最佳逼近性质。本文用实际引文数据对这些特性进行了说明。研究结果-本文揭示了计算样条曲线产生的可微函数仍然捕获小但真实的变化。它在通过线段连接离散数据和提供整体最佳拟合曲线之间提供了一种中间方式。研究限制/启示-使用样条的主要缺点是准确的数据是必不可少的。实际意义-样条函数可用于说明性和建模。
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A continuous description of discrete data points in informetrics: Using spline functions
Purpose – The paper aims to propose the use of spline functions for the description and visualization of discrete informetric data.Design/methodology/approach – Interpolating cubic splines: are interpolating functions (they pass through the given data points); are cubic, i.e. are polynomials of third degree; have first and second derivatives in the data points, implying that they connect data points in a smooth way; satisfy a best‐approximation property which tends to reduce curvature. These properties are illustrated in the paper using real citation data.Findings – The paper reveals that calculating splines yields a differentiable function that still captures small but real changes. It offers a middle way between connecting discrete data by line segments and providing an overall best‐fitting curve.Research limitations/implications – The major disadvantage of the use of splines is that accurate data are essential.Practical implications – Spline functions can be used for illustrative as well as modelling p...
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Aslib Proceedings
Aslib Proceedings 工程技术-计算机:信息系统
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