1998
DOI: 10.1002/(sici)1099-131x(199806/07)17:3/4<231::aid-for695>3.0.co;2-l
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Parameter variation and new product diffusion

Abstract: In this paper, an empirical investigation into parameter variation in diffusion models is conducted. Specifically, parameter estimates for two consumer durable products are obtained for time‐invariant, flexible‐form and stochastic‐parameter specifications. Existing diffusion models considered in the empirical analysis include the Bass (1969), Easingwood, Mahajan and Muller (1983), Kamakura and Balasubramanian (1987) and Horsky (1990) diffusion models. In addition, a new model is developed that can be estimated… Show more

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Cited by 29 publications
(14 citation statements)
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“…In order to obtain estimates of this unobserved brand equity for each period, we use the Kalman filter algorithm, which has been used extensively in control engineering and has been recently applied in the marketing literature (for example, Xie, Sirbu, and Wang 1997;Putsis 1998;Naik, Mantrala, and Sawyer 1998;Akcura, Gonul, and Petrova 2004). The Kalman filter is a recursive algorithm that is used to obtain efficient estimates of an unobserved state variable (which happens to be brand equity in our case) in each period based on the information observed in that period.…”
Section: Note That In Equation 6bmentioning
confidence: 99%
“…In order to obtain estimates of this unobserved brand equity for each period, we use the Kalman filter algorithm, which has been used extensively in control engineering and has been recently applied in the marketing literature (for example, Xie, Sirbu, and Wang 1997;Putsis 1998;Naik, Mantrala, and Sawyer 1998;Akcura, Gonul, and Petrova 2004). The Kalman filter is a recursive algorithm that is used to obtain efficient estimates of an unobserved state variable (which happens to be brand equity in our case) in each period based on the information observed in that period.…”
Section: Note That In Equation 6bmentioning
confidence: 99%
“…Following literature on technology innovation [4][5][6][7], we assume that the evolution in market share of new vehicle drivetrains over time follows a logistic trajectory. Typically, such trajectories are mathematically expressed as…”
Section: Modeling Technologies Substitutionmentioning
confidence: 99%
“…Power's belief that the market for HEVs will stabilize at a 3% in 2010 primarily because of a $3000 to $4000 excess price premium. It is beyond the scope of this paper to discuss the complex relationship between price and diffusion of innovations -the reader may refer herself, for example, to [14][15][16][17]7]. Price is a very important factor, but so is whether the new product constitutes an improvement over the technology it purports to substitute and consumers like it [17].…”
Section: Modeling Technologies Substitutionmentioning
confidence: 99%
“…However, they do not present conclusions on how to include the price variable in the diffusion model. Putsis (1998) proposes a flexible diffusion model with varying parameters and replacement sales that accommodates the effect of price on adoption rate and market potential. Putsis validates his model by using data on consumer durables and observes that the adoption rate and the effect of potential market vary over time (the same holds for the other parameters analyzed).…”
Section: Price Affects Both the Adoption Rate And The Potential Marketmentioning
confidence: 99%