Live
Black Hat USAAI BusinessBlack Hat AsiaAI BusinessMachine Learning in Blockchain for AI Engineers and Blockchain Developers - Blockchain CouncilGoogle News: Machine LearningCincinnati doctors built an AI assistant to improve heart failure care - Cincinnati EnquirerGoogle News: AIAI ScrapingTowards AIPrivate AI: Enterprise Data in the RAG EraTowards AII Read Every Line of Anthropic’s Leaked Source Code So You Don’t Have To.Towards AIStop Writing Boilerplate. Start Building: Introducing app-generator-cliTowards AIData MiningTowards AIMastering LangGraph: The Backbone of Stateful Multi-Agent AITowards AIThis Model Completely Crashed Computer Vision.Towards AIAlibaba Unveils Third Closed-Source AI Model in Focus on ProfitBloomberg TechnologyFrom Interface to Behavior: The New UX EngineeringTowards AIPart 16: Data Manipulation in Data Validation and Quality ControlTowards AIBlack Hat USAAI BusinessBlack Hat AsiaAI BusinessMachine Learning in Blockchain for AI Engineers and Blockchain Developers - Blockchain CouncilGoogle News: Machine LearningCincinnati doctors built an AI assistant to improve heart failure care - Cincinnati EnquirerGoogle News: AIAI ScrapingTowards AIPrivate AI: Enterprise Data in the RAG EraTowards AII Read Every Line of Anthropic’s Leaked Source Code So You Don’t Have To.Towards AIStop Writing Boilerplate. Start Building: Introducing app-generator-cliTowards AIData MiningTowards AIMastering LangGraph: The Backbone of Stateful Multi-Agent AITowards AIThis Model Completely Crashed Computer Vision.Towards AIAlibaba Unveils Third Closed-Source AI Model in Focus on ProfitBloomberg TechnologyFrom Interface to Behavior: The New UX EngineeringTowards AIPart 16: Data Manipulation in Data Validation and Quality ControlTowards AI

Monodense Deep Neural Model for Determining Item Price Elasticity

arXiv cs.LGby Lakshya Garg, Sai Yaswanth, Deep Narayan Mishra, Karthik Kumaran, Anupriya Sharma, Mayank UniyalApril 1, 20262 min read0 views
Source Quiz

arXiv:2603.29261v1 Announce Type: new Abstract: Item Price Elasticity is used to quantify the responsiveness of consumer demand to changes in item prices, enabling businesses to create pricing strategies and optimize revenue management. Sectors such as store retail, e-commerce, and consumer goods rely on elasticity information derived from historical sales and pricing data. This elasticity provides an understanding of purchasing behavior across different items, consumer discount sensitivity, and demand elastic departments. This information is particularly valuable for competitive markets and resource-constrained businesses decision making which aims to maximize profitability and market share. Price elasticity also uncovers historical shifts in consumer responsiveness over time. In this pap

View PDF HTML (experimental)

Abstract:Item Price Elasticity is used to quantify the responsiveness of consumer demand to changes in item prices, enabling businesses to create pricing strategies and optimize revenue management. Sectors such as store retail, e-commerce, and consumer goods rely on elasticity information derived from historical sales and pricing data. This elasticity provides an understanding of purchasing behavior across different items, consumer discount sensitivity, and demand elastic departments. This information is particularly valuable for competitive markets and resource-constrained businesses decision making which aims to maximize profitability and market share. Price elasticity also uncovers historical shifts in consumer responsiveness over time. In this paper, we model item-level price elasticity using large-scale transactional datasets, by proposing a novel elasticity estimation framework which has the capability to work in an absence of treatment control setting. We test this framework by using Machine learning based algorithms listed below, including our newly proposed Monodense deep neural network. (1) Monodense-DL network -- Hybrid neural network architecture combining embedding, dense, and Monodense layers (2) DML -- Double machine learning setting using regression models (3) LGBM -- Light Gradient Boosting Model We evaluate our model on multi-category retail data spanning millions of transactions using a back testing framework. Experimental results demonstrate the superiority of our proposed neural network model within the framework compared to other prevalent ML based methods listed above.

Comments: Accepted at AAIML 2026 (International Conference on Advances in Artificial Intelligence and Machine Learning). Copyright 2026 IEEE. 6 pages, 4 figures

Subjects:

Machine Learning (cs.LG); Artificial Intelligence (cs.AI)

Cite as: arXiv:2603.29261 [cs.LG]

(or arXiv:2603.29261v1 [cs.LG] for this version)

https://doi.org/10.48550/arXiv.2603.29261

arXiv-issued DOI via DataCite (pending registration)

Submission history

From: Deep Narayan Mishra [view email] [v1] Tue, 31 Mar 2026 04:50:51 UTC (678 KB)

Was this article helpful?

Sign in to highlight and annotate this article

AI
Ask AI about this article
Powered by AI News Hub · full article context loaded
Ready

Conversation starters

Ask anything about this article…

Daily AI Digest

Get the top 5 AI stories delivered to your inbox every morning.

More about

modelneural networkannounce

Knowledge Map

Knowledge Map
TopicsEntitiesSource
Monodense D…modelneural netw…announcerevenuemarketmillionarXiv cs.LG

Connected Articles — Knowledge Graph

This article is connected to other articles through shared AI topics and tags.

Knowledge Graph100 articles · 205 connections
Scroll to zoom · drag to pan · click to open

Discussion

Sign in to join the discussion

No comments yet — be the first to share your thoughts!

More in Market News