Statistical Models for Partial Orders Based on Data Depth and Formal Concept Analysis

Blocher, Hannah and Schollmeyer, Georg and Jansen, Christoph (2022) Statistical Models for Partial Orders Based on Data Depth and Formal Concept Analysis. In: Information Processing and Management of Uncertainty in Knowledge-Based Systems :. Communications in Computer and Information Sciences . Springer, Cham. ISBN 9783031089732

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Abstract

In this paper, we develop statistical models for partial orders where the partially ordered character cannot be interpreted as stemming from the non-observation of data. After discussing some shortcomings of distance based models in this context, we introduce statistical models for partial orders based on the notion of data depth. Here we use the rich vocabulary of formal concept analysis to utilize the notion of data depth for the case of partial orders data. After giving a concise definition of unimodal distributions and unimodal statistical models of partial orders, we present an algorithm for efficiently sampling from unimodal models as well as from arbitrary models based on data depth.

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Contribution in Book/Report/Proceedings
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ID Code:
221172
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Deposited On:
07 Jun 2024 08:45
Refereed?:
Yes
Published?:
Published
Last Modified:
16 Jul 2024 05:29