Node-Level Financial Optimization in Demand Forecasting Through Dynamic Cost Asymmetry and Feedback Mechanism
- URL: http://arxiv.org/abs/2512.19722v1
- Date: Tue, 16 Dec 2025 19:23:02 GMT
- Title: Node-Level Financial Optimization in Demand Forecasting Through Dynamic Cost Asymmetry and Feedback Mechanism
- Authors: Alessandro Casadei, Clemens Grupp, Sreyoshi Bhaduri, Lu Guo, Wilson Fung, Rohit Malshe, Raj Ratan, Ankush Pole, Arkajit Rakshit,
- Abstract summary: This work introduces a methodology to adjust forecasts based on node-specific cost function asymmetry.<n>The proposed model generates savings by dynamically incorporating the cost asymmetry into the forecasting error probability distribution to favor the least expensive scenario.<n> empirical results demonstrate the model's ability to achieve $5.1M annual savings.
- Score: 31.970157864180706
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This work introduces a methodology to adjust forecasts based on node-specific cost function asymmetry. The proposed model generates savings by dynamically incorporating the cost asymmetry into the forecasting error probability distribution to favor the least expensive scenario. Savings are calculated and a self-regulation mechanism modulates the adjustments magnitude based on the observed savings, enabling the model to adapt to station-specific conditions and unmodeled factors such as calibration errors or shifting macroeconomic dynamics. Finally, empirical results demonstrate the model's ability to achieve \$5.1M annual savings.
Related papers
- Forecasting the U.S. Treasury Yield Curve: A Distributionally Robust Machine Learning Approach [0.12891210250935145]
We study U.S. Treasury yield curve forecasting under distributional uncertainty.<n>Rather than minimizing average forecast error, the forecaster selects a decision rule that minimizes worst case expected loss.<n>We propose a distributionally robust ensemble forecasting framework that integrates factor models with high dimensional nonparametric machine learning models.
arXiv Detail & Related papers (2026-01-08T05:26:43Z) - Hierarchical Evaluation Function: A Multi-Metric Approach for Optimizing Demand Forecasting Models [0.479839492673697]
The Hierarchical Evaluation Function (HEF) is proposed as a multi-metric framework for hyperparameter optimization.<n>HEF integrates explanatory power (R2), sensitivity to extreme errors (RMSE), and average accuracy (MAE)<n>The performance of HEF was assessed using four widely recognized benchmark datasets in the forecasting domain.
arXiv Detail & Related papers (2025-08-18T16:25:49Z) - On Equivariant Model Selection through the Lens of Uncertainty [49.137341292207]
Equivariant models leverage prior knowledge on symmetries to improve predictive performance, but misspecified architectural constraints can harm it instead.<n>We compare frequentist (via Conformal Prediction), Bayesian (via the marginal likelihood), and calibration-based measures to naive error-based evaluation.<n>We find that uncertainty metrics generally align with predictive performance, but Bayesian model evidence does so inconsistently.
arXiv Detail & Related papers (2025-06-23T13:35:06Z) - Model-free Methods for Event History Analysis and Efficient Adjustment (PhD Thesis) [55.2480439325792]
This thesis is a series of independent contributions to statistics unified by a model-free perspective.<n>The first chapter elaborates on how a model-free perspective can be used to formulate flexible methods that leverage prediction techniques from machine learning.<n>The second chapter studies the concept of local independence, which describes whether the evolution of one process is directly influenced by another.
arXiv Detail & Related papers (2025-02-11T19:24:09Z) - Variational Inference of Parameters in Opinion Dynamics Models [9.51311391391997]
This work uses variational inference to estimate the parameters of an opinion dynamics ABM.
We transform the inference process into an optimization problem suitable for automatic differentiation.
Our approach estimates both macroscopic (bounded confidence intervals and backfire thresholds) and microscopic ($200$ categorical, agent-level roles) more accurately than simulation-based and MCMC methods.
arXiv Detail & Related papers (2024-03-08T14:45:18Z) - COPlanner: Plan to Roll Out Conservatively but to Explore Optimistically
for Model-Based RL [50.385005413810084]
Dyna-style model-based reinforcement learning contains two phases: model rollouts to generate sample for policy learning and real environment exploration.
$textttCOPlanner$ is a planning-driven framework for model-based methods to address the inaccurately learned dynamics model problem.
arXiv Detail & Related papers (2023-10-11T06:10:07Z) - End-to-End Reinforcement Learning of Koopman Models for Economic Nonlinear Model Predictive Control [45.84205238554709]
We present a method for reinforcement learning of Koopman surrogate models for optimal performance as part of (e)NMPC.
We show that the end-to-end trained models outperform those trained using system identification in (e)NMPC.
arXiv Detail & Related papers (2023-08-03T10:21:53Z) - Structured Dynamic Pricing: Optimal Regret in a Global Shrinkage Model [50.06663781566795]
We consider a dynamic model with the consumers' preferences as well as price sensitivity varying over time.
We measure the performance of a dynamic pricing policy via regret, which is the expected revenue loss compared to a clairvoyant that knows the sequence of model parameters in advance.
Our regret analysis results not only demonstrate optimality of the proposed policy but also show that for policy planning it is essential to incorporate available structural information.
arXiv Detail & Related papers (2023-03-28T00:23:23Z) - Forecasting and stabilizing chaotic regimes in two macroeconomic models
via artificial intelligence technologies and control methods [0.3670422696827526]
One of the key tasks in the economy is forecasting the economic agents' expectations of the future values of economic variables.
The behavior of mathematical models can be irregular, including chaotic, which reduces their predictive power.
We study the regimes of behavior of two economic models and identify irregular dynamics in them.
arXiv Detail & Related papers (2023-02-20T11:55:15Z) - Interpreting and predicting the economy flows: A time-varying parameter
global vector autoregressive integrated the machine learning model [0.0]
The paper proposes a time-varying parameter global vector autoregressive framework for predicting and analysing developed region economic variables.
We show the convincing in-sample of our proposed model in all economic variables and relatively high precision out-of-sample predictions with different-frequency economic inputs.
arXiv Detail & Related papers (2022-07-31T06:24:15Z) - Optimal Scheduling of Isolated Microgrids Using Automated Reinforcement
Learning-based Multi-period Forecasting [8.95322871711331]
An optimal scheduling model is proposed for isolated microgrids by using automated reinforcement learning-based multi-period forecasting of renewable power generations and loads.
The simulation results show that compared with the traditional scheduling model without forecasting, this approach manages to significantly reduce the system operating costs by improving the prediction accuracy.
arXiv Detail & Related papers (2021-08-15T15:46:22Z) - Generative Temporal Difference Learning for Infinite-Horizon Prediction [101.59882753763888]
We introduce the $gamma$-model, a predictive model of environment dynamics with an infinite probabilistic horizon.
We discuss how its training reflects an inescapable tradeoff between training-time and testing-time compounding errors.
arXiv Detail & Related papers (2020-10-27T17:54:12Z) - Adaptive Control and Regret Minimization in Linear Quadratic Gaussian
(LQG) Setting [91.43582419264763]
We propose LqgOpt, a novel reinforcement learning algorithm based on the principle of optimism in the face of uncertainty.
LqgOpt efficiently explores the system dynamics, estimates the model parameters up to their confidence interval, and deploys the controller of the most optimistic model.
arXiv Detail & Related papers (2020-03-12T19:56:38Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.