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  • Search: subject:"Store-level aggregate data"
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Year of publication
Subject
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Random coefficient multinomial logit 2 Store-level aggregate data 2 Aggregation 1 Bayes-Statistik 1 Bayesian estimation 1 Bayesian estmation 1 Bayesian inference 1 Estimation 1 Estimation theory 1 Logit model 1 Logit-Modell 1 Monte Carlo simulation 1 Monte-Carlo-Simulation 1 Schätztheorie 1 Schätzung 1
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Undetermined 1
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Article 2
Language
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English 1 Undetermined 1
Author
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Otter, Thomas 2 Zenetti, German 2
Published in...
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Quantitative Marketing and Economics 1 Quantitative marketing and economics : QME 1
Source
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ECONIS (ZBW) 1 RePEc 1
Showing 1 - 2 of 2
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Bayesian estimation of the random coefficients logit from aggregate count data
Zenetti, German; Otter, Thomas - In: Quantitative Marketing and Economics 12 (2014) 1, pp. 43-84
The random coefficients logit model is a workhorse in marketing and empirical industrial organizations research. When only aggregate data are available, it is customary to calibrate the model based on market shares as data input, even if the data are available in the form of aggregate counts....
Persistent link: https://www.econbiz.de/10010988422
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Cover Image
Bayesian estimation of the random coefficients logit from aggregate count data
Zenetti, German; Otter, Thomas - In: Quantitative marketing and economics : QME 12 (2014) 1, pp. 43-84
Persistent link: https://www.econbiz.de/10010259962
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