Online Resource Allocation under Partially Predictable Demand

09/30/2018
by   Dawsen Hwang, et al.
0

For online resource allocation problems, we propose a new demand arrival model where the sequence of arrivals contains both an adversarial component and a stochastic one. Our model requires no demand forecasting; however, due to the presence of the stochastic component, we can partially predict future demand as the sequence of arrivals unfolds. Under the proposed model, we study the problem of the online allocation of a single resource to two types of customers, and design online algorithms that outperform existing ones. Our algorithms are adjustable to the relative size of the stochastic component, and our analysis reveals that as the portion of the stochastic component grows, the loss due to making online decisions decreases. This highlights the value of (even partial) predictability in online resource allocation. We impose no conditions on how the resource capacity scales with the maximum number of customers. However, we show that using an adaptive algorithm---which makes online decisions based on observed data---is particularly beneficial when capacity scales linearly with the number of customers. Our work serves as a first step in bridging the long-standing gap between the two well-studied approaches to the design and analysis of online algorithms based on (1) adversarial models and (2) stochastic ones. Using novel algorithm design, we demonstrate that even if the arrival sequence contains an adversarial component, we can take advantage of the limited information that the data reveals to improve allocation decisions. We also study the classical secretary problem under our proposed arrival model, and we show that randomizing over multiple stopping rules may increase the probability of success.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/07/2021

Online Resource Allocation with Time-Flexible Customers

In classic online resource allocation problems, a decision-maker tries t...
research
11/15/2017

Online Allocation with Traffic Spikes: Mixing Adversarial and Stochastic Models

Motivated by Internet advertising applications, online allocation proble...
research
10/08/2020

Online Allocation of Reusable Resources via Algorithms Guided by Fluid Approximations

We consider the problem of online allocation (matching and assortments) ...
research
02/06/2020

Online Allocation of Reusable Resources: Achieving Optimal Competitive Ratio

We study the problem of allocating a given set of resources to sequentia...
research
06/21/2023

Online Resource Allocation with Convex-set Machine-Learned Advice

Decision-makers often have access to a machine-learned prediction about ...
research
11/18/2019

Online Learning and Matching for Resource Allocation Problems

In order for an e-commerce platform to maximize its revenue, it must rec...
research
05/07/2023

A generalized network level disruption strategy selection model for urban public transport systems

A fast recovery from disruptions is of vital importance for the reliabil...

Please sign up or login with your details

Forgot password? Click here to reset