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2016 | Buch

A Practical Guide to Averaging Functions

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This book offers an easy-to-use and practice-oriented reference guide to mathematical averages. It presents different ways of aggregating input values given on a numerical scale, and of choosing and/or constructing aggregating functions for specific applications. Building on a previous monograph by Beliakov et al. published by Springer in 2007, it outlines new aggregation methods developed in the interim, with a special focus on the topic of averaging aggregation functions. It examines recent advances in the field, such as aggregation on lattices, penalty-based aggregation and weakly monotone averaging, and extends many of the already existing methods, such as: ordered weighted averaging (OWA), fuzzy integrals and mixture functions. A substantial mathematical background is not called for, as all the relevant mathematical notions are explained here and reported on together with a wealth of graphical illustrations of distinct families of aggregation functions. The authors mainly focus on practical applications and give central importance to the conciseness of exposition, as well as the relevance and applicability of the reported methods, offering a valuable resource for computer scientists, IT specialists, mathematicians, system architects, knowledge engineers and programmers, as well as for anyone facing the issue of how to combine various inputs into a single output value.

Inhaltsverzeichnis

Frontmatter
Chapter 1. Review of Aggregation Functions
Abstract
This chapter introduces aggregation functions and some of their applications, and then discusses the main properties and prototypical examples of aggregation functions. Some construction methods are discussed and strategies for choosing suitable aggregation functions are outlined. This chapter ends with an overview of some methods of approximation and optimization that will be used for fitting aggregation functions to empirical data.
Gleb Beliakov, Humberto Bustince Sola, Tomasa Calvo Sánchez
Chapter 2. Classical Averaging Functions
Abstract
This chapter presents the classical means, starting with the weighted arithmetic and power means, and then continuing to the quasi-arithmetic means. The topics of generating functions, comparability and weights selection are covered. Several interesting classes of non-quasi-arithmetic means are presented, including Gini, Bonferroni, logarithmic and Bajraktarevic means. Methods of extension of symmetric bivariate means to the multivariate case are also discussed.
Gleb Beliakov, Humberto Bustince Sola, Tomasa Calvo Sánchez
Chapter 3. Ordered Weighted Averaging
Abstract
The focus of this chapter is on OWA functions. The formal definitions and the main properties of OWA are presented. Some extensions of the OWA functions are discussed in detail. Various methods of fitting OWA functions to empirical data are presented. This chapter ends with the discussion of the median functions and order statistics as the special cases of OWA functions.
Gleb Beliakov, Humberto Bustince Sola, Tomasa Calvo Sánchez
Chapter 4. Fuzzy Integrals
Abstract
This chapter presents two main types of fuzzy integrals, the Choquet integral and the Sugeno integral. Fuzzy measures are introduced and their main properties and special cases are discussed. Various indices which characterize fuzzy measures are presented. The topic of fitting fuzzy measures to empirical data is treated in detail. Induced fuzzy integrals are also presented.
Gleb Beliakov, Humberto Bustince Sola, Tomasa Calvo Sánchez
Chapter 5. Penalty Based Averages
Abstract
Every averaging function can be looked at from the perspective of minimizing some sort of a penalty, a price paid for the deviation of the output from the inputs. Penalty functions are formally defined and their special classes are presented. The quasi-arithmetic means, OWA and Choquet integral are obtained as special cases of the penalty based averages. Other classes of averages such as the deviation and entropic means are also presented. This chapter introduces new penalty based averages and relates the averages to the maximum likelihood principle.
Gleb Beliakov, Humberto Bustince Sola, Tomasa Calvo Sánchez
Chapter 6. More Types of Averaging and Construction Methods
Abstract
This chapter treats some advanced topics, including a number of construction methods, such as idempotization, graduation curves and flying parameter. It also presents various related functions, such as the overlap and grouping functions. The recent extensions of the Bonferroni mean are treated in detail. The issue of consistency and stability of weighted averages is presented.
Gleb Beliakov, Humberto Bustince Sola, Tomasa Calvo Sánchez
Chapter 7. Non-monotone Averages
Abstract
Monotonicity is a fundamental property of aggregation. However not all means are monotone increasing. This chapter presents a weaker notion of directional monotonicity of averages. The robust estimators of location, mixture functions, Gini and Lehmer means, as well as density based means and medians are treated in the framework of weak monotonicity. Cone monotonicity and monotonicity with respect to coalitions are introduced and discussed. The notion of directional monotonicity is presented and pre-aggregation functions are formalized.
Gleb Beliakov, Humberto Bustince Sola, Tomasa Calvo Sánchez
Chapter 8. Averages on Lattices
Abstract
This chapter covers averages defined on product lattices, in particular in the intuitionistic fuzzy sets and interval-valued fuzzy sets setting. Some general construction methods and special cases are outlined. The medians on lattices are discussed in detail and several alternative forms of the median function are presented.
Gleb Beliakov, Humberto Bustince Sola, Tomasa Calvo Sánchez
Backmatter
Metadaten
Titel
A Practical Guide to Averaging Functions
verfasst von
Gleb Beliakov
Humberto Bustince Sola
Tomasa Calvo
Copyright-Jahr
2016
Electronic ISBN
978-3-319-24753-3
Print ISBN
978-3-319-24751-9
DOI
https://doi.org/10.1007/978-3-319-24753-3

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