159 research outputs found
Inverse Optimization with Noisy Data
Inverse optimization refers to the inference of unknown parameters of an
optimization problem based on knowledge of its optimal solutions. This paper
considers inverse optimization in the setting where measurements of the optimal
solutions of a convex optimization problem are corrupted by noise. We first
provide a formulation for inverse optimization and prove it to be NP-hard. In
contrast to existing methods, we show that the parameter estimates produced by
our formulation are statistically consistent. Our approach involves combining a
new duality-based reformulation for bilevel programs with a regularization
scheme that smooths discontinuities in the formulation. Using epi-convergence
theory, we show the regularization parameter can be adjusted to approximate the
original inverse optimization problem to arbitrary accuracy, which we use to
prove our consistency results. Next, we propose two solution algorithms based
on our duality-based formulation. The first is an enumeration algorithm that is
applicable to settings where the dimensionality of the parameter space is
modest, and the second is a semiparametric approach that combines nonparametric
statistics with a modified version of our formulation. These numerical
algorithms are shown to maintain the statistical consistency of the underlying
formulation. Lastly, using both synthetic and real data, we demonstrate that
our approach performs competitively when compared with existing heuristics
Local Water Storage Control for the Developing World
Most cities in India do not have water distribution networks that provide
water throughout the entire day. As a result, it is common for homes and
apartment buildings to utilize water storage systems that are filled during a
small window of time in the day when the water distribution network is active.
However, these water storage systems do not have disinfection capabilities, and
so long durations of storage (i.e., as few as four days) of the same water
leads to substantial increases in the amount of bacteria and viruses in that
water. This paper considers the stochastic control problem of deciding how much
water to store each day in the system, as well as deciding when to completely
empty the water system, in order to tradeoff: the financial costs of the water,
the health costs implicit in long durations of storing the same water, the
potential for a shortfall in the quantity of stored versus demanded water, and
water wastage from emptying the system. To solve this problem, we develop a new
Binary Dynamic Search (BiDS) algorithm that is able to use binary search in one
dimension to compute the value function of stochastic optimal control problems
with controlled resets to a single state and with constraints on the maximum
time span in between resets of the system
A Supply Chain Design Model with Unreliable Supply
Uncertainties abound within a supply chain and have big impacts on its performance. We propose an integrated model for a three-tiered supply chain network with one supplier, one or more facilities and retailers. This model takes into consideration the unreliable aspects of a supply chain. the properties of the optimal solution to the model are analyzed to reveal the impacts of supply uncertainty on supply chain design decisions. We also propose a general solution algorithm for this model. Computational experience is presented and discussed
OM Forum-challenges and strategies in managing nonprofit operations: an operations management perspective
The operations management (OM) community is paying increasing attention to the analysis of nonprofit operations. However, what is it about this type of operation that makes it particularly interesting to OM scholars? We address this question by studying the objectives, actors, and main activities of nonprofit operations and the most common challenges they face. In addition, we suggest tactical and operational strategies to address these challenges by considering works in the for-profit sector and in different applied areas. The ultimate goal of this paper is to inspire and stimulate OM researchers to develop significant theoretical and empirical models in this novel stream of literature
Estimating and Incentivizing Imperfect-Knowledge Agents with Hidden Rewards
In practice, incentive providers (i.e., principals) often cannot observe the
reward realizations of incentivized agents, which is in contrast to many
principal-agent models that have been previously studied. This information
asymmetry challenges the principal to consistently estimate the agent's unknown
rewards by solely watching the agent's decisions, which becomes even more
challenging when the agent has to learn its own rewards. This complex setting
is observed in various real-life scenarios ranging from renewable energy
storage contracts to personalized healthcare incentives. Hence, it offers not
only interesting theoretical questions but also wide practical relevance. This
paper explores a repeated adverse selection game between a self-interested
learning agent and a learning principal. The agent tackles a multi-armed bandit
(MAB) problem to maximize their expected reward plus incentive. On top of the
agent's learning, the principal trains a parallel algorithm and faces a
trade-off between consistently estimating the agent's unknown rewards and
maximizing their own utility by offering adaptive incentives to lead the agent.
For a non-parametric model, we introduce an estimator whose only input is the
history of principal's incentives and agent's choices. We unite this estimator
with a proposed data-driven incentive policy within a MAB framework. Without
restricting the type of the agent's algorithm, we prove finite-sample
consistency of the estimator and a rigorous regret bound for the principal by
considering the sequential externality imposed by the agent. Lastly, our
theoretical results are reinforced by simulations justifying applicability of
our framework to green energy aggregator contracts.Comment: 72 pages, 6 figures. arXiv admin note: text overlap with
arXiv:2304.0740
Potential Energy Advantage of Quantum Economy
Energy cost is increasingly crucial in the modern computing industry with the
wide deployment of large-scale machine learning models and language models. For
the firms that provide computing services, low energy consumption is important
both from the perspective of their own market growth and the government's
regulations. In this paper, we study the energy benefits of quantum computing
vis-a-vis classical computing. Deviating from the conventional notion of
quantum advantage based solely on computational complexity, we redefine
advantage in an energy efficiency context. Through a Cournot competition model
constrained by energy usage, we demonstrate quantum computing firms can
outperform classical counterparts in both profitability and energy efficiency
at Nash equilibrium. Therefore quantum computing may represent a more
sustainable pathway for the computing industry. Moreover, we discover that the
energy benefits of quantum computing economies are contingent on large-scale
computation. Based on real physical parameters, we further illustrate the scale
of operation necessary for realizing this energy efficiency advantage.Comment: 23 pages, many figure
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