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2006 | nr 1 | 55--72
Tytuł artykułu

Analiza danych dyskretnych w ujęciu retrospektywnym - podstawy teoretyczne i zastosowanie w marketingu

Autorzy
Treść / Zawartość
Warianty tytułu
A retrospective review of categorical data analysis - theory and marketing practice
Języki publikacji
PL
Abstrakty
Przedstawiono historyczny rozwój metod analizy danych dyskretnych - budowa modelu (modele logit i probit), estymacja i weryfikacja. W obrębie tych zagadnień zaakcentowano wady podejść i historyczne próby ich przezwyciężenia. Następnie podjęto zagadnienie niejednorodności obserwacji, wskazując sposoby radzenia sobie z nią. Omówienie możliwości praktycznego wykorzystania prezentowanych metod ograniczono do zagadnień marketingowych.
EN
The paper presents historical development of the categorical data analysis for models with explicit response variables defined as well as models without such a distinction. Besides difficulties in model building we focus on methods and procedures for model testing and for the estimation of model parameters. Within these issues we emphasize the drawbacks of the models and historical trials to overcome them. The problem of data heterogeneity and methods that help to handle it were considered. Discussion of practical usefulness of categorical data analysis is limited to marketing problems.
Rocznik
Numer
Strony
55--72
Opis fizyczny
Twórcy
Bibliografia
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