The document discusses a method for collaborative data publishing aimed at ensuring privacy for horizontally partitioned data across multiple providers, introducing the concept of m-privacy to protect against colluding insiders. It presents heuristic algorithms for efficient m-privacy checks and demonstrates that their approach provides comparable utility and efficiency to existing methods while maintaining privacy guarantees. Additionally, the paper identifies future research questions related to privacy constraints and data knowledge modeling.