XInsight: eXplainable Data Analysis Through The Lens of Causality

Author:

Ma Pingchuan1ORCID,Ding Rui2ORCID,Wang Shuai1ORCID,Han Shi2ORCID,Zhang Dongmei2ORCID

Affiliation:

1. Hong Kong University of Science and Technology, Hong Kong, Hong Kong

2. Microsoft Research, Beijing, China

Abstract

In light of the growing popularity of Exploratory Data Analysis (EDA), understanding the underlying causes of the knowledge acquired by EDA is crucial. However, it remains under-researched. This study promotes a transparent and explicable perspective on data analysis, called eXplainable Data Analysis (XDA). For this reason, we present XInsight, a general framework for XDA. XInsight provides data analysis with qualitative and quantitative explanations of causal and non-causal semantics. This way, it will significantly improve human understanding and confidence in the outcomes of data analysis, facilitating accurate data interpretation and decision making in the real world. XInsight is a three-module, end-to-end pipeline designed to extract causal graphs, translate causal primitives into XDA semantics, and quantify the quantitative contribution of each explanation to a data fact. XInsight uses a set of design concepts and optimizations to address the inherent difficulties associated with integrating causality into XDA. Experiments on synthetic and real-world datasets as well as a user study demonstrate the highly promising capabilities of XInsight.

Publisher

Association for Computing Machinery (ACM)

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