(2020) Explainable Data Decompositions.
|
Text
disc-dalleiger,vreeken.pdf Download (572kB) | Preview |
Abstract
Our goal is to discover the components of a dataset, characterize why we deem these components, explain how these components are different from each other, as well as identify what properties they share among each other. As is usual, we consider regions in the data to be components if they show significantly different distributions. What is not usual, however, is that we parameterize these distributions with patterns that are informative for one or more components. We do so because these patterns allow us to characterize what is going on in our data as well as explain our decomposition. We define the problem in terms of a regularized maximum likelihood, in which we use the Maximum Entropy principle to model each data component with a set of patterns. As the search space is large and unstructured, we propose the deterministic Disc algorithm to efficiently discover high-quality decompositions via an alternating optimization approach. Empirical evaluation on synthetic and real-world data shows that efficiently discovers meaningful components and accurately characterises these in easily understandable terms.
Item Type: | Conference or Workshop Item (A Paper) (Paper) |
---|---|
Divisions: | Jilles Vreeken (Exploratory Data Analysis) |
Conference: | AAAI National Conference of the American Association for Artificial Intelligence |
Depositing User: | Jilles Vreeken |
Date Deposited: | 09 Dec 2019 14:29 |
Last Modified: | 10 May 2021 11:13 |
Primary Research Area: | NRA1: Trustworthy Information Processing |
URI: | https://publications.cispa.saarland/id/eprint/3006 |
Actions
Actions (login required)
View Item |