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2010 | 31 | 326--337
Tytuł artykułu

Linguistic Summaries of Time Series: on Some Extended Aggregation Techniques

Treść / Zawartość
Warianty tytułu
Lingwistyczne podsumowania ciągów czasowych: Pewne rozszerzenia technik agregacji
Języki publikacji
EN
Abstrakty
EN
We further extend our approach to the linguistic summarization of time series (cf. Kacprzyk, Wilbik and Zadrożny) in which an approach based on a calculus of linguistically quantified propositions is employed, and the essence of the problem is equated with a linguistic quantifier driven aggregation of partial scores (trends). We proceed towards a multicriteria analysis of summaries by assuming as a quality criterion Yager's measure of informativeness that combines in a natural way the measures of truth, focus and specificity, to obtain a more advanced evaluation of summaries. The use of the informativeness measure for the purpose of a multicriteria evaluation of linguistic summaries of time series seems to be an effective and efficient approach, yet simple enough for practical applications. Results on the summarization of quotations of an investment (mutual) fund are very encouraging. (original abstract)
W artykule przedstawiono kolejne rozszerzenie poprzednich prac autorów (Kacprzyk, Wilbik, Zadrożny), dotyczących podsumowań lingwistycznych, w których podstawowym podejściem jest rachunek lingwistycznie kwantyfikowanych wyrażeń, a głównym zagadnieniem jest oparte na kwantyfikatorach lingwistycznych agregowanie częściowych ocen (trendów). Wykorzystuje się podejście wielokryterialne do podsumowań z użyciem miary informatywności, zaproponowanej przez Yagera, odwołującej się do kryteriów prawdy, zogniskowania i specyficzności. Tego rodzaju podejście wielokryterialne wydaje się zarówno efektywne merytorycznie, jak i wystarczająco zrozumiałe i intuicyjne. Przytoczono obszerne przykłady dla notowań funduszy inwestycyjnych.(abstrakt oryginalny)
Rocznik
Tom
31
Strony
326--337
Opis fizyczny
Twórcy
  • Polska Akademia Nauk
autor
  • Polska Akademia Nauk
Bibliografia
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Typ dokumentu
Bibliografia
Identyfikatory
Identyfikator YADDA
bwmeta1.element.ekon-element-000171542782

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