scholarly journals Dynamic Pricing Decisions and Seller-Buyer Interactions under Capacity Constraints

Games ◽  
2018 ◽  
Vol 9 (1) ◽  
pp. 10 ◽  
Author(s):  
Vincent Mak ◽  
Amnon Rapoport ◽  
Eyran Gisches
2018 ◽  
Vol 25 (2) ◽  
pp. 213-234 ◽  
Author(s):  
Hongjuan Song ◽  
Yushi Jiang

The aim of this study is to examine the advertising information learning processes of potential tourists and observe how potential tourists sequentially adjust their perceived reference prices and purchase intentions with different risk preferences and choices with respect to gains (the current price is lower than the consumer’s reference price) or losses (the current price is higher than the reference price). In this study, a Bayesian experiment was conducted to elicit reference prices in the presence of tourism advertising with uncertain information. The findings show that with respect to gains, risk avoiders do not reduce their reference prices as significantly as do risk seekers when exposed to price-informative advertising. Exposure to image advertising changes potential tourists’ risk preferences, and the reference price drops more significantly for risk avoiders than for risk seekers. With respect to losses, informative and image advertising impact the reference price for participants with different risk preferences but not at a statistically significant level.


2020 ◽  
pp. 135481661989695 ◽  
Author(s):  
Yuting Chen ◽  
Rong Zhang ◽  
Bin Liu

The rise of the sharing economy has changed the traditional way of providing service to consumers. Airbnb is the most successful peer-to-peer model in the hospitality industry. This article investigates how to conduct strategic dynamic pricing in a competitive market by considering market conditions, quality, and risk sensitivity. Our research yields three main conclusions. First, we observe that the higher the risk level suppliers face, the more profit they will get; the lower the risk level consumers face, the more utilities they obtain. Second, we find that fixed pricing may be optimal or near-optimal for the platform when market size is small, the accommodation quality is better, and consumers’ reliability is low. Otherwise, a flexible pricing strategy is optimal. Finally, we extend the research into dynamic pricing decision in presence of Bayesian social learning and propose that the less-perfect accommodation requires social learning more urgently. In tourism peak period, social learning has less positive impact when the Airbnb accommodation is much perfect. These conclusions provide useful guidance on how the Airbnb and hotel can take advantage of the competitive market.


2017 ◽  
Vol 4 (4) ◽  
pp. 60-78
Author(s):  
T. Godwin

Revenue management is the art and science of making the right product or service available to the right customer at the right time through the right channel at right price. Dynamic pricing plays a crucial role in the implementation of revenue management in passenger airline reservation system. The liberalization of domestic aviation sector in countries such as India has seen many new market entrants resulting in higher competition while setting the flight fares. The variation in flight fares of Delhi – Mumbai passenger airline sector is studied for a departure date based on the number of days in advance the booking is made. Descriptive and inferential statistical analyses of the fares reveal the impact of airlines, booking channels and departure time windows on the pricing decisions of flight fares. The analysis framework of this study could be used as a basis for a continuous tracking study of flight fares by airline revenue managers to help them arrive at the right fare for each fare class of a flight.


Author(s):  
T. Godwin

Revenue management is the art and science of making the right product or service available to the right customer at the right time through the right channel at right price. Dynamic pricing plays a crucial role in the implementation of revenue management in passenger airline reservation system. The liberalization of domestic aviation sector in countries such as India has seen many new market entrants resulting in higher competition while setting the flight fares. The variation in flight fares of Delhi – Mumbai passenger airline sector is studied for a departure date based on the number of days in advance the booking is made. Descriptive and inferential statistical analyses of the fares reveal the impact of airlines, booking channels and departure time windows on the pricing decisions of flight fares. The analysis framework of this study could be used as a basis for a continuous tracking study of flight fares by airline revenue managers to help them arrive at the right fare for each fare class of a flight.


2019 ◽  
Vol 2 (1) ◽  
pp. 75-91 ◽  
Author(s):  
Apostolos Ampountolas ◽  
Gareth Shaw ◽  
Simon James

PurposeThe purpose of this paper is to investigate how using social media (SM) as a tool to influence demand motivates the distribution of different price promotion strategies to encourage consumers to utilize direct bookings, along with how this impacts revenue strategies and profitability.Design/methodology/approachThis study surveyed hotel executives who hold managerial positions and revenue managers with a direct influence on pricing decisions and developed multiple regression analysis models for various pricing approaches.FindingsThis study confirms the relationship between distribution channels and dynamic pricing strategies, although the same is not true with respect to traditional pricing techniques. The authors found that the adoption of SM as a strategic tool provides a platform to promote tactical revenue management strategies and to practice differential pricing motives.Originality/valueThe findings of the study will help hotel revenue managers to take into account a new way of thinking – namely, an interactive response to consumers’ preferences to improve profitability, based on different pricing methods distributed through SM. In this context, SM has elevated pricing strategies to a new and particularly challenging level.


2020 ◽  
Vol 2020 ◽  
pp. 1-26
Author(s):  
Zhongmiao Sun ◽  
Qi Xu ◽  
Baoli Shi

Increasing attention is being paid to the pricing decisions of ride-hailing platforms. These platforms usually face market demand fluctuation and reflect supply and demand imbalances. Unlike existing studies, we focus on the optimal dynamic pricing of the platforms under imbalance between supply and demand caused by market fluctuation. Dynamic models are constructed based on the state change of supply and demand by using optimal control theory, with the aim of maximizing the platform’s total profit. We obtain the optimal trajectories of price, supply, and demand under three ride demand situations. The effects of some key parameters on pricing decisions, such as coefficient of demand fluctuation, service quality, and fixed commission rate, are examined. We find the optimal dynamic price can improve the match of supply-demand in ride-hailing market and enhance the revenue of platform.


2009 ◽  
Vol 1 (1) ◽  
pp. 46-53 ◽  
Author(s):  
Martin Natter ◽  
Thomas Reutterer ◽  
Andreas Mild

Abstract Merchandise managers have long dreamt of automated dynamic systems to help them make well-informed pricing decisions. However, such systems have proved as elusive as the Holy Grail - until now, that is. The story of an Austrian DIY retailer shows often undetected opportunities to use valuable information, hidden in retailers’ data warehouses, on consumer reactions to previous price changes in order to make automatic pricing and promotion decisions.


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