Computational Antitrust Computational Antitrust

Publisher Description

This is an Open access book which provides a comprehensive framework for identifying monopolistic behaviors in the digital economy, with a focus on discriminatory pricing as one manifestation of these practices. As digital platforms increasingly dominate markets and collect unprecedented volumes of user data, pricing strategies tailored to user profiles—often resulting in discriminatory pricing—raise major concerns about consumer rights, market fairness, and competition. Differential pricing driven by big data is widespread in sectors like e-commerce, travel, and ride-hailing; however, when adopted by dominant enterprises, it risks evolving into monopolistic practices that challenge existing legal frameworks and consumer protections. On the algorithmic level, this book tackles these challenges by developing an innovative, machine-learning-based approach for real-time detection of discriminatory pricing and related monopolistic behaviors. Recognizing that traditional regulatory oversight heavily relies on consumer complaints and is often retrospective, we propose an advanced Dual Pricing Model Clustering (DPMC) framework, which proactively distinguishes between discriminatory and non-discriminatory pricing using real-world data patterns. Initially, the book focuses on the online ride-hailing industry, where dynamic pricing is common and has attracted widespread public attention. It offers practical insights and a robust, transferable framework applicable to other sectors facing similar issues. From the perspective of antitrust business needs, we have also developed an intelligent antitrust system. Beyond its statistical analysis capabilities, the book explores the application of large models in the antitrust field, proposing a "Computational Antitrust Large Model." This model integrates large language models with monopolistic behavior identification models, combining insights from public sentiment and other intelligence sources to assist regulators in proactively detecting monopolistic behavior clues. The book is designed for professionals and scholars in antitrust regulation, digital economy governance, and data science, aiming to equip them with the knowledge and tools needed to address monopolistic and discriminatory practices in the platform economy.

GENRE
Non-Fiction
RELEASED
2026
9 February
LANGUAGE
EN
English
LENGTH
171
Pages
PUBLISHER
Springer Nature Singapore
SELLER
Springer Nature B.V.
SIZE
9.3
MB
Transradial Approach for Percutaneous Interventions Transradial Approach for Percutaneous Interventions
2017
Asset Pricing Models and Market Efficiency Asset Pricing Models and Market Efficiency
2026
AI Agent for Information Retrieval: Generating and Ranking AI Agent for Information Retrieval: Generating and Ranking
2025
The Lebowski Shock The Lebowski Shock
2025
Fundamentals of Materials Science Fundamentals of Materials Science
2025
Simultaneous Inference in Regression Simultaneous Inference in Regression
2010
Controllable Artificial Intelligence and the Future of Law Controllable Artificial Intelligence and the Future of Law
2025
Blue Book on AI and Rule of Law in the World (2022) Blue Book on AI and Rule of Law in the World (2022)
2024
Artificial Intelligence Governance and the Blockchain Revolution Artificial Intelligence Governance and the Blockchain Revolution
2024
Principle of Criminal Imputation for Negligence Crime Involving Artificial Intelligence Principle of Criminal Imputation for Negligence Crime Involving Artificial Intelligence
2024
Blue Book on AI and Rule of Law in the World (2021) Blue Book on AI and Rule of Law in the World (2021)
2024
Blue Book on AI and Rule of Law in the World (2020) Blue Book on AI and Rule of Law in the World (2020)
2022