The Minimum Description Length Principle for Pattern Mining: A Survey
This is an incremental survey for researchers in data analysis, summarizing existing methods without new contributions.
The paper surveys the application of the Minimum Description Length (MDL) principle to pattern mining, aiming to select compact, high-quality pattern sets from data, but does not report specific results or numbers.
This is about the Minimum Description Length (MDL) principle applied to pattern mining. The length of this description is kept to the minimum. Mining patterns is a core task in data analysis and, beyond issues of efficient enumeration, the selection of patterns constitutes a major challenge. The MDL principle, a model selection method grounded in information theory, has been applied to pattern mining with the aim to obtain compact high-quality sets of patterns. After giving an outline of relevant concepts from information theory and coding, as well as of work on the theory behind the MDL and similar principles, we review MDL-based methods for mining various types of data and patterns. Finally, we open a discussion on some issues regarding these methods, and highlight currently active related data analysis problems.