Skip to main content
Log in

Game theoretic analysis of pricing and vertical cooperative advertising of a retailer-duopoly with a common manufacturer

  • Original Paper
  • Published:
Central European Journal of Operations Research Aims and scope Submit manuscript

Abstract

This paper considers competition of duopolistic retailers, who sell substitutable products supplied by a single manufacturer offering a vertical cooperative advertising program. The price-dependent component of the demand function is derived from the consumers’ utility function in order to avoid logically inconsistent results. Additionally, each supply chain member can increase the costumers’ demand by advertising. By means of game theory, we get the following results: (a) Retailer competition harms all players, but is beneficial to the consumers. (b) Stronger competition is followed by less advertising. (c) Channel-leadership is not always advantageous to the manufacturer, and—likewise—retailers can also be better off when accepting followership. However, as our analysis shows, the increased complexity of the model under consideration reaches the limits of an analytical solution. Therefore, we give a brief outlook on non-nalytical solution methods for Nash and Stackelberg games, that could be used in future research, in the end of our paper.

This is a preview of subscription content, log in via an institution to check access.

Access this article

Price excludes VAT (USA)
Tax calculation will be finalised during checkout.

Instant access to the full article PDF.

Fig. 1
Fig. 2
Fig. 3
Fig. 4
Fig. 5
Fig. 6

Similar content being viewed by others

References

  • Ahmadi-Javid A, Hoseinpour P (2012) On a cooperative advertising model for a supply chain with one manufacturer and one retailer. Eur J Oper Res 219(2):458–466

    Article  Google Scholar 

  • Aust G, Buscher U (2012) Vertical cooperative advertising and pricing decisions in a manufacturer-retailer supply chain: a game-theoretic approach. Eur J Oper Res 223(2):473–482

    Article  Google Scholar 

  • Aust G, Buscher U (2013) Vertical cooperative advertising in a retailer duopoly. Dresdner Beiträge zur Betriebswirtschaftslehre (171/13), TU Dresden, Fakultät Wirtschaftswissenschaften

  • Bard JF (1998) Practical bilevel optimization: algorithms and applications, nonconvex optimization and its applications, vol 30. Kluwer Academic Publishers, New York

  • Bergen M, John G (1997) Understanding cooperative advertising participation rates in conventional channels. J Mark Res 34(3):357–369

    Article  Google Scholar 

  • Berger PD (1972) Vertical cooperative advertising ventures. J Mark Res 9(3):309–312

    Article  Google Scholar 

  • Bianco L, Caramia M, Giordani S (2009) A bilevel flow model for hazmat transportation network design. Transp Res Part C Emerg Technol 17(2):175–196

    Article  Google Scholar 

  • Choi SC (1991) Price competition in a channel structure with a common retailer. Mark Sci 10(4):271–296

    Article  Google Scholar 

  • Choi SC (1996) Price competition in a duopoly common retailer channel. J Retail 72(2):117–134

    Article  Google Scholar 

  • Chutani A, Sethi SP (2012) Cooperative advertising in a dynamic retail market oligopoly. Dyn Games Appl 2(4):347–375

    Article  Google Scholar 

  • Colson B, Marcotte P, Savard G (2007) An overview of bilevel optimization. Ann Oper Res 153(1):235–256

    Article  Google Scholar 

  • Dempe S (2002) Foundations of bilevel programming, nonconvex optimization and its applications, vol 61. Kluwer Academic Publishers, New York

  • Dutta S, Bergen M, John G, Rao A (1995) Variations in the contractual terms of cooperative advertising contracts: an empirical investigation. Mark Lett 6(1):15–22

    Article  Google Scholar 

  • Ghadimi S, Szidarovszky F, Farahani RZ, Khiabani AY (2013) Coordination of advertising in supply chain management with cooperating manufacturer and retailers. IMA J Manag Math 24(1):1–19

    Article  Google Scholar 

  • He X, Krishnamoorthy A, Prasad A, Sethi SP (2011) Retail competition and cooperative advertising. Oper Res Lett 39(1):11–16

    Article  Google Scholar 

  • He X, Krishnamoorthy A, Prasad A, Sethi SP (2012) Co-op advertising in dynamic retail oligopolies. Decis Sci 43(1):73–106

    Article  Google Scholar 

  • Huang Z, Li SX (2001) Co-op advertising models in manufacturer-retailer supply chains: a game theory approach. Eur J Oper Res 135(3):527–544

    Article  Google Scholar 

  • Ingene CA, Parry ME (2004) Mathematical models of distribution channels. Kluwer Academic Publishers, New York

  • Ingene CA, Parry ME (2007) Bilateral monopoly, identical distributors, and game-theoretic analyses of distribution channels. J Acad Mark Sci 35(4):586–602

    Article  Google Scholar 

  • Karray S, Zaccour G (2006) Could co-op advertising be a manufacturer’s counterstrategy to store brands? J Bus Res 59(9):1008–1015

    Article  Google Scholar 

  • Karray S, Zaccour G (2007) Effectiveness of coop advertising programs in competitive distribution channels. Int Game Theory Rev 9(2):151–167

    Article  Google Scholar 

  • Kim SY, Staelin R (1999) Manufacturer allowances and retailer pass-through rates in a competitive environment. Mark Sci 18(1):59–76

    Article  Google Scholar 

  • Nagler M (2006) An exploratory analysis of the determinants of cooperative advertising participation rates. Mark Lett 17:91–102

    Article  Google Scholar 

  • Naoum-Sawaya J, Elhedhli S (2011) Controlled predatory pricing in a multiperiod stackelberg game: an MPEC approach. J Glob Optim 50(2):345–362

    Article  Google Scholar 

  • Pedroso JP (1996) Numerical solution of nash and stackelberg equilibria: an evolutionary approach. In: Proceedings of the First Asia Conference on Simulated Evolution and Learning, Korea

  • Rajabioun R, Atashpaz-Gargari E, Lucas C (2008) Colonial competitive algorithm as a tool for nash equilibrium point achievement. In: Gervasi O, Murgante B, Laganà A, Taniar D, Mun Y, Gavrilova ML (eds) Computational science and its applications—ICCSA 2008, vol 5073. Lecture notes in computer science. Springer, Berlin, pp 680–695

  • Rajesh J, Gupta K, Kusumakar HS, Jayaraman VK, Kulkarni BD (2003) A tabu search based approach for solving a class of bilevel programming problems in chemical engineering. J Heuristics 9(4):307–319

    Article  Google Scholar 

  • Sadigh AN, Mozafari M, Karimi B (2012) Manufacturer-retailer supply chain coordination: a bi-level programming approach. Adv Eng Softw 45(1):144–152

    Article  Google Scholar 

  • Sefrioui M, Perlaux J (2000) Nash genetic algorithms: examples and applications. In: Proceedings of the 2000 congress on evolutionary Computation, vol 1, pp 509–516

  • SeyedEsfahani MM, Biazaran M, Gharakhani M (2011) A game theoretic approach to coordinate pricing and vertical co-op advertising in manufacturer-retailer supply chains. Eur J Oper Res 211(2):263–273

    Article  Google Scholar 

  • Sinha A, Malo P, Frantsev A, Deb K (2014) Finding optimal strategies in a multi-period multi-leader-follower stackelberg game using an evolutionary algorithm. Comput Oper Res 41:374–385

    Article  Google Scholar 

  • Somers TM, Gupta YP, Harriot SR (1990) Analysis of cooperative advertising expenditures: a transfer-function modeling approach. J Advert Res 30(5):35–49

    Google Scholar 

  • Szmerekovsky JG, Zhang J (2009) Pricing and two-tier advertising with one manufacturer and one retailer. Eur J Oper Res 192(3):904–917

    Article  Google Scholar 

  • Talbi EG (ed) (2013) Metaheuristics for bi-level optimization, studies in computational intelligence, vol 482. Springer, Heidelberg

  • Wang SD, Zhou YW, Wang JP (2010) Coordinating ordering, pricing and advertising policies for a supply chain with random demand and two production modes. Int J Prod Econ 126(2):168–180

    Article  Google Scholar 

  • Wang SD, Zhou YW, Min J, Zhong YG (2011) Coordination of cooperative advertising models in a one-manufacturer two-retailer supply chain system. Comput Ind Eng 61(4):1053–1071

    Article  Google Scholar 

  • Wu CH, Chen CW, Hsieh CC (2012) Competitive pricing decisions in a two-echelon supply chain with horizontal and vertical competition. Int J Prod Econ 135(1):265–274

    Article  Google Scholar 

  • Xie J, Neyret A (2009) Co-op advertising and pricing models in manufacturer-retailer supply chains. Comput Ind Eng 56(4):1375–1385

    Article  Google Scholar 

  • Xie J, Wei JC (2009) Coordinating advertising and pricing in a manufacturer-retailer channel. Eur J Oper Res 197(2):785–791

    Article  Google Scholar 

  • Yan R (2010) Cooperative advertising, pricing strategy and firm performance in the e-marketing age. J Acad Mark Sci 38:510–519

    Article  Google Scholar 

  • Yang SL, Zhou YW (2006) Two-echelon supply chain models: considering duopolistic retailers’ different competitive behaviors. Int J Prod Econ 103(1):104–116

    Article  Google Scholar 

  • Yu Y, Huang GQ (2010) Nash game model for optimizing market strategies, configuration of platform products in a vendor managed inventory (VMI) supply chain for a product family. Eur J Oper Res 206(2):361–373

    Article  Google Scholar 

  • Yue J, Austin J, Wang MC, Huang Z (2006) Coordination of cooperative advertising in a two-level supply chain when manufacturer offers discount. Eur J Oper Res 168(1):65–85

    Article  Google Scholar 

  • Zhang J, Xie J (2012) A game theoretical study of cooperative advertising with multiple retailers in a distribution channel. J Syst Sci Syst Eng 21(1):37–55

    Article  Google Scholar 

  • Zhang R, Liu B, Wang W (2012) Pricing decisions in a dual channels system with different power structures. Econ Model 29(2):523–533

    Article  Google Scholar 

  • Zhao J, Tang W, Zhao R, Wei J (2012) Pricing decisions for substitutable products with a common retailer in fuzzy environments. Eur J Oper Res 216(2):409–419

    Article  Google Scholar 

Download references

Acknowledgments

The authors are very grateful to the editor and to the two anonymous reviewers for their valuable comments which helped improving the quality of our paper.

Author information

Authors and Affiliations

Authors

Corresponding author

Correspondence to Gerhard Aust.

Appendix

Appendix

Proof

(Proposition 1) We start with the manufacturer’s decision problem stated in Eq. (11) and set the first order partial derivatives \(\partial \pi _{\mathrm {m}}/ \partial w\) and \(\partial \pi _{\mathrm {m}}/ \partial A\) to zero:

$$\begin{aligned} \frac{\partial \pi _{\mathrm {m}}}{\partial w}&= \left( k_{\mathrm {r}}\sum _{j=1}^2 \sqrt{a_i} + k_{\mathrm {m}}\sqrt{A}\right) \left[ \sum _{j=1}^2 \alpha _j - \beta (2w+m_j)+\epsilon (2w+m_{3-j})\right] =0\nonumber \\\end{aligned}$$
(17)
$$\begin{aligned} \frac{\partial \pi _{\mathrm {m}}}{\partial A}&= \frac{k_{\mathrm {m}}w}{2\sqrt{A}}\left[ \sum _{j=1}^2 \alpha _j - \beta (w+m_j)+\epsilon (w+m_{3-j})\right] -1=0. \end{aligned}$$
(18)

Please note that participation rate \(t\) equals zero due to its solely negative influence on the manufacturer’s profit function. From Eqs. (17) and (18), we derive:

$$\begin{aligned} w&= \frac{\alpha _1+\alpha _2-(\beta -\epsilon )(m_1+m_2)}{4(\beta -\epsilon )}\end{aligned}$$
(19)
$$\begin{aligned} A&= \frac{1}{4}k_{\mathrm {m}}^2w^2\left[ \alpha _1+\alpha _2-(\beta -\epsilon )(m_1+m_2)-2w(\beta -\epsilon )\right] . \end{aligned}$$
(20)

Likewise, we calculate the first order partial derivatives of the retailers’ decision problems (see Eq. (12)), \(\partial \pi _{\mathrm {r}i}/\partial m_i\) and \(\partial \pi _{\mathrm {r}i}/ \partial a_i\), and set them to zero:

$$\begin{aligned} \frac{\partial \pi _{\mathrm {r}i}}{\partial m_i}&= \left( k_{\mathrm {r}}\sum _{j=1}^2 \sqrt{a_i} + k_{\mathrm {m}}\sqrt{A}\right) \left[ \alpha _i-\beta (w+m_i)+\epsilon (w+m_{3-i})-\beta m_i\right] =0\nonumber \\ \end{aligned}$$
(21)
$$\begin{aligned} \frac{\partial \pi _{\mathrm {r}i}}{\partial a_i}&= \frac{k_{\mathrm {r}}m_i}{2\sqrt{a_i}} \left[ \alpha _i - \beta (w+m_i)+\epsilon (w+m_{3-i})\right] -(1-t)=0. \end{aligned}$$
(22)

From these equations, we derive:

$$\begin{aligned} m_i&= \frac{\alpha _i-(\beta -\epsilon )w+\epsilon m_i}{2\beta }\end{aligned}$$
(23)
$$\begin{aligned} a_i&= \frac{k_{\mathrm {r}}^2m_i^2\left[ \alpha _i - (\beta -\epsilon )w-\beta m_i + \epsilon m_{3-i}\right] }{4(1-t)^2}. \end{aligned}$$
(24)

With \(t=0\), we can now solve the system of equations described by Eqs. (17)–(20), which leads us to the expressions stated in Proposition 1. This completes proof of Proposition 1.

Proof

(Proposition 2) The retailers’ decision problems in a Manufacturer Stackelberg—Horizontal Nash game are identical to Eq. (12) and have the solutions stated in Eqs. (23) and (24). These expressions can be rearranged to

$$\begin{aligned} m_i&= \frac{2\alpha _i\beta +\alpha _{3-i}\epsilon +(-2\beta ^2+\beta \epsilon +\epsilon ^2)w}{(2\beta -\epsilon )(2\beta +\epsilon )}\end{aligned}$$
(25)
$$\begin{aligned} a_i&= \frac{\beta ^2k_{\mathrm {r}}^2\left[ 2\alpha _i\beta +\alpha _{3-i}\epsilon +(-2\beta ^2+\beta \epsilon +\epsilon ^2)w\right] ^4}{4(2\beta -\epsilon )^4(2\beta +\epsilon )^4(1-t)^2}. \end{aligned}$$
(26)

Constituting the constraints of the manufacturer’s decision problem [see Eq. (15)], these response functions have to be inserted into the manufacturer’s profit function. In order to reduce the complexness of this problem, we set \(\varLambda _1 = \varLambda _2 = \varLambda \), which leads to \(\alpha _1 = \alpha _2 = \alpha \). Hence, we can rewrite Eqs. (25) and (26) as follows:

$$\begin{aligned} m_1&= m_2 = \frac{\alpha -(\beta -\epsilon )w}{2\beta -\epsilon }\end{aligned}$$
(27)
$$\begin{aligned} a_1&= a_2 = \frac{\beta ^2k_{\mathrm {r}}^2\left[ \alpha -(\beta -\epsilon )w\right] ^4}{4(2\beta -\epsilon )^4(1-t)^2}. \end{aligned}$$
(28)

Inserting these equations into the profit function stated in Eq. (15), we get:

$$\begin{aligned} \pi _{\mathrm {m}}&= \frac{2\beta w\left[ \alpha -(\beta -\epsilon )w\right] }{2\beta -\epsilon }\left\{ \frac{\beta k_{\mathrm {r}}^2\left[ \alpha -(\beta -\epsilon )w\right] ^2}{(2\beta -\epsilon )^2(1-t)}+k_{\mathrm {m}}\sqrt{A}\right\} \nonumber \\&-\frac{\beta ^2k_{\mathrm {r}}^2\left[ \alpha -(\beta -\epsilon )w\right] ^4t}{2(2\beta -\epsilon )^4(1-t)^2}-A-C_{\mathrm {m}}. \end{aligned}$$
(29)

By setting the first order partial derivative \(\partial \pi _{\mathrm {m}}/ \partial A\) to zero,

$$\begin{aligned} \frac{\partial \pi _{\mathrm {m}}}{\partial A} = \frac{\beta k_{\mathrm {m}}w \left[ \alpha -(\beta -\epsilon )w\right] }{(2\beta -\epsilon )\sqrt{A}}-1 =0, \end{aligned}$$
(30)

we can determine the optimal global advertising expenditures as a function of \(w\):

$$\begin{aligned} A = \frac{\beta ^2k_{\mathrm {m}}^2w^2\left[ \alpha -(\beta -\epsilon )w\right] ^2}{(2\beta -\epsilon )^2}. \end{aligned}$$
(31)

Setting the first order partial derivative \(\partial \pi _{\mathrm {m}}/ \partial t\) to zero,

$$\begin{aligned} \frac{\partial \pi _{\mathrm {m}}}{\partial t} = \frac{2\beta ^2 k_{\mathrm {r}}^2 w \left[ \alpha -(\beta -\epsilon )w\right] ^3}{(2\beta -\epsilon )^3(1-t)^2} - \frac{\beta ^2 k_{\mathrm {r}}^2 \left[ \alpha -(\beta -\epsilon )w\right] ^4(1+t)}{2(2\beta -\epsilon )^4(1-t)^3}=0 \end{aligned}$$
(32)

leads us to

$$\begin{aligned} t = \frac{9\beta w - 5 \epsilon w - \alpha }{7\beta w - 3 \epsilon w + \alpha }. \end{aligned}$$
(33)

As described in Sect. 2, the participation rate is only defined within \(0\le t <1\). However, Eq. (33) can take negative values for \(w<\alpha / (9\beta -5\epsilon )\). In this case, we have to set \(t=0\) to avoid mathematical inconsistencies.

The first order partial derivative \(\partial \pi _{\mathrm {m}}/ \partial w\) is

$$\begin{aligned} \frac{\partial \pi _{\mathrm {m}}}{\partial w}&= \frac{2\alpha \beta -4\beta (\beta -\epsilon )w}{2\beta -\epsilon }\left\{ \frac{\beta k_{\mathrm {r}}^2\left[ \alpha -(\beta -\epsilon )w\right] ^2}{(2\beta -\epsilon )^2(1-t)}+k_{\mathrm {m}}\sqrt{A}\right\} \nonumber \\&-\frac{4\beta ^2k_{\mathrm {r}}^2(\beta -\epsilon )w\left[ \alpha -(\beta -\epsilon )w\right] ^2}{(2\beta -\epsilon )^3(1-t)}+\frac{2\beta ^2k_{\mathrm {r}}^2(\beta -\epsilon )\left[ \alpha -(\beta -\epsilon )w\right] ^3t}{(2\beta -\epsilon )^4(1-t)^2}\nonumber \\ \end{aligned}$$
(34)

and is also set to zero. This equation can be simplified by inserting Eq. (31):

$$\begin{aligned}&k_{\mathrm {r}}^2(2\beta -\epsilon )\left[ \alpha -(\beta -\epsilon )w\right] \left[ \alpha -2(\beta -\epsilon )w\right] (1-t)\nonumber \\&\quad -2k_{\mathrm {r}}^2(\beta -\epsilon )(2\beta -\epsilon )w\left[ \alpha -(\beta -\epsilon )w\right] (1-t)\nonumber \\&\quad +k_{\mathrm {r}}^2(\beta -\epsilon )\left[ \alpha -(\beta -\epsilon )w\right] ^2t\nonumber \\&\quad -k_{\mathrm {m}}^2(2\beta -\epsilon )^2w\left[ \alpha -2(\beta -\epsilon )w\right] (1-t)^2=0. \end{aligned}$$
(35)

Due to the non-negativity restriction of \(t\), we now have to conduct a case-by-case analysis. For \(w\ge \alpha / (9\beta -5\epsilon )\), we insert Eq. (33) into Eq. (35):

$$\begin{aligned}&w^2\left[ k_{\mathrm {r}}^2\left( -49\beta ^3+91\beta ^2\epsilon -51\beta \epsilon ^2+9\epsilon ^3\right) +8k_{\mathrm {m}}^2\left( -4\beta ^3+8\beta ^2\epsilon -5\beta \epsilon ^2+\epsilon ^3\right) \right] \nonumber \\&\quad +w\left[ 2\alpha \beta k_{\mathrm {r}}^2(7\beta -3\epsilon )+4\alpha k_{\mathrm {m}}^2(2\beta -\epsilon )^2\right] + \alpha ^2k_{\mathrm {r}}^2(3\beta -\epsilon ) =0 \end{aligned}$$
(36)

The solution of this expression are given as \(\tilde{w}_1\) and \(\tilde{w}_2\) in Step 1 of the solution procedure stated in Proposition 2. For \(w<\alpha / (9\beta -5\epsilon )\), we insert \(t=0\) into Eq. (35):

$$\begin{aligned}&w^2\left[ 4k_{\mathrm {r}}^2(\beta -\epsilon )^2+2k_{\mathrm {m}}^2(-2\beta +\epsilon )(\beta -\epsilon ) \right] \nonumber \\&\quad +w\left[ 5\alpha k_{\mathrm {r}}^2(-\beta +\epsilon )+\alpha k_{\mathrm {m}}^2(2\beta -\epsilon ) \right] + \alpha ^2k_{\mathrm {r}}^2 =0. \end{aligned}$$
(37)

The solution of this expression are given as \(\tilde{w}_3\) and \(\tilde{w}_4\) in Step 1 of the solution procedure stated in Proposition 2. This completes proof of Proposition 2.

Proof

(Proposition 3) As defined in Sect. 2, \(\alpha _i\) is a function of \(\varLambda _i\) with

$$\begin{aligned} \frac{\partial \alpha _i}{\partial \varLambda _i} = \frac{1}{B+\varTheta }>0 \quad \text {and} \quad \frac{\partial \alpha _i}{\partial \varLambda _{3-i}} = 0. \end{aligned}$$
(38)

Due to the positive first order derivative \(\partial \alpha _i/\partial \varLambda _i\) and the chain rule \(\mathrm {d} f(h(x)) / \mathrm {d} x = \mathrm {d} f(h(x)) / \mathrm {d} h(x) \cdot \mathrm {d} h(x) / \mathrm {d} x\), the first order derivative with respect to \(\alpha _i\) has the same prefix as the first order derivation with respect to \(\varLambda _i\). Hence, one can easily make the conclusions given in Part (i) and Part (ii) of Proposition 3 with the following first order derivatives:

$$\begin{aligned} \frac{\partial m_i}{\partial \alpha _i}&= \frac{5\beta }{2(3\beta -\epsilon )(2\beta +\epsilon )}>0\end{aligned}$$
(39)
$$\begin{aligned} \frac{\partial m_i}{\partial \alpha _{3-i}}&= \frac{-\beta +2\epsilon }{2(3\beta -\epsilon )(2\beta +\epsilon )}<0\quad \text {for}\quad \beta >2\epsilon \Leftrightarrow B>2\varTheta \end{aligned}$$
(40)
$$\begin{aligned} \frac{\partial a_i}{\partial \alpha _i}&= \frac{5\beta ^3k_{\mathrm {r}}^2(5\alpha _i\beta +\alpha _{3-i}\beta +2\alpha _{3-i}\epsilon )^3}{16(3\beta -\epsilon )^4(2\beta +\epsilon )^4}>0\end{aligned}$$
(41)
$$\begin{aligned} \frac{\partial a_i}{\partial \alpha _{3-i}}&= \frac{\beta ^2k_{\mathrm {r}}^2(5\alpha _i\beta +\alpha _{3-i}\beta +2\alpha _{3-i}\epsilon )^3(\beta +2\epsilon )}{16(3\beta -\epsilon )^4(2\beta +\epsilon )^4}>0. \end{aligned}$$
(42)

Due to the complexity of the resulting first order derivatives \(\partial \pi _{\mathrm {r}i}/ \partial \alpha _i\) and \(\partial \pi _{\mathrm {r}i}/ \partial \alpha _{3-i}\), we are not able to proof Part (iii) of Proposition 3 analytically. Instead of that, we computed a numerical study with 3,000,000 randomly generated sets of parameters within the range \(10\le \alpha _i\le 30\) and \(0.1\le \beta ,\epsilon ,k_{\mathrm {m}},k_{\mathrm {r}}\le 10\) and could thereby show numerically that \(\partial \pi _{\mathrm {r}i}/ \partial \alpha _i >0\) and \(\partial \pi _{\mathrm {r}i}/ \partial \alpha _{3-i} >0\) holds for each considered combination of parameters—except 18 cases with \(\beta \approx 0.1\) and \(\epsilon >5\), which violate the condition \(\beta >\epsilon \) resulting from \(B>\varTheta \) given in Sect. 2, though.

Hence, we are confident that the given inequalities hold for feasible parameter combinations. This completes proof of Proposition 3.

Rights and permissions

Reprints and permissions

About this article

Cite this article

Aust, G., Buscher, U. Game theoretic analysis of pricing and vertical cooperative advertising of a retailer-duopoly with a common manufacturer. Cent Eur J Oper Res 24, 127–147 (2016). https://doi.org/10.1007/s10100-014-0338-7

Download citation

  • Published:

  • Issue Date:

  • DOI: https://doi.org/10.1007/s10100-014-0338-7

Keywords

Navigation