Multivariate exploratory data analysis for large databases: An application to modelling firms' innovation using CIS data
Year of publication: |
2019
|
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Authors: | Bou-Llusar, Juan Carlos ; Satorra, Albert |
Published in: |
BRQ Business Research Quarterly. - Barcelona : Elsevier España, ISSN 2340-9436. - Vol. 22.2019, 4, p. 275-293
|
Publisher: |
Barcelona : Elsevier España |
Subject: | Community Innovation Survey (CIS) | Dimension reduction | Innovation | MAR and MCAR | MEDA | Missing data | Multivariate analysis | OLS | ordered logistic and Tobit regression |
Type of publication: | Article |
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Type of publication (narrower categories): | Article |
Language: | English |
Other identifiers: | 10.1016/j.brq.2018.10.001 [DOI] 1681754525 [GVK] hdl:10419/261867 [Handle] |
Classification: | M10 - Business Administration. General ; c18 ; C24 - Truncated and Censored Models ; c55 ; O30 - Technological Change; Research and Development. General |
Source: |
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Bou-Llusar, Juan Carlos, (2019)
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Autonomous Cars and Responsible Innovation
Lukovics, Miklós, (2021)
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Alleyne, Antonio, (2017)
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Bou-Llusar, Juan Carlos, (2010)
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Univariate versus multivariate modeling of panel data
Bou-Llusar, Juan Carlos, (2014)
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The persistence of abnormal returns at industry and firm levels: evidence from Spain
Bou-Llusar, Juan Carlos, (2007)
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