For a seller operating in a nonstationary demand setting, a key question is how to collect and filter data to find the optimal prices for its products. In this chapter, we discuss the commonly used frameworks for dynamic pricing and demand learning in nonstationary demand settings. For exogenously changing demand settings, we provide an overview of the recent dynamic pricing studies that expand the antecedent literature on statistical filtering theory. In the case of endogenously changing demand settings, we review different approaches on how to manage intertemporal dependencies between price and demand. We also provide a few possible directions for future research
We explore a scenario in which a monopolist producer of information goods seeks to maximize its prof...
In this thesis, we focus on oligopolistic markets for a single perishable product, where firms compe...
We explore a scenario in which a monopolist producer of information goods seeks to maximize its prof...
For a seller operating in a nonstationary demand setting, a key question is how to collect and filte...
Determining the right price is a fundamental business problem that can be addressed by data-driven m...
Dynamic pricing of commodities without knowing the exact relation between price and demand is a much...
Dynamic pricing of commodities without knowing the exact relation between price and demand is a much...
Dynamic pricing is the dynamic adjustment of prices to consumers depending upon the value these cust...
The topic of dynamic pricing and learning has received a considerable amount of attention in recent ...
The topic of dynamic pricing and learning has received a considerable amount of attention in recent ...
This paper considers the problem of changing prices over time to maximize expectedrevenues in the pr...
We present an optimization approach for jointly learning the demand as a functionof price, and dynam...
A lot of software systems today need to make real-time decisions to optimize an objective of interes...
In a dynamic pricing problem where the demand function is not known a priori, price experimentation ...
In this paper, we address the problem of dynamic pricing to optimize the revenue coming from the sal...
We explore a scenario in which a monopolist producer of information goods seeks to maximize its prof...
In this thesis, we focus on oligopolistic markets for a single perishable product, where firms compe...
We explore a scenario in which a monopolist producer of information goods seeks to maximize its prof...
For a seller operating in a nonstationary demand setting, a key question is how to collect and filte...
Determining the right price is a fundamental business problem that can be addressed by data-driven m...
Dynamic pricing of commodities without knowing the exact relation between price and demand is a much...
Dynamic pricing of commodities without knowing the exact relation between price and demand is a much...
Dynamic pricing is the dynamic adjustment of prices to consumers depending upon the value these cust...
The topic of dynamic pricing and learning has received a considerable amount of attention in recent ...
The topic of dynamic pricing and learning has received a considerable amount of attention in recent ...
This paper considers the problem of changing prices over time to maximize expectedrevenues in the pr...
We present an optimization approach for jointly learning the demand as a functionof price, and dynam...
A lot of software systems today need to make real-time decisions to optimize an objective of interes...
In a dynamic pricing problem where the demand function is not known a priori, price experimentation ...
In this paper, we address the problem of dynamic pricing to optimize the revenue coming from the sal...
We explore a scenario in which a monopolist producer of information goods seeks to maximize its prof...
In this thesis, we focus on oligopolistic markets for a single perishable product, where firms compe...
We explore a scenario in which a monopolist producer of information goods seeks to maximize its prof...