Quantifying Uncertainty in Aggregate Queries over Integrated Datasets

09/11/2023
by   Deniz Turkcapar, et al.
0

Data integration is a notoriously difficult and heuristic-driven process, especially when ground-truth data are not readily available. This paper presents a measure of uncertainty by providing maximal and minimal ranges of a query outcome in two-table, one-to-many data integration workflows. Users can use these query results to guide a search through different matching parameters, similarity metrics, and constraints. Even though there are exponentially many such matchings, we show that in appropriately constrained circumstances that this result range can be calculated in polynomial time with bipartite graph matching. We evaluate this on real-world datasets and synthetic datasets, and find that uncertainty estimates are more robust when a graph-matching based approach is used for data integration.

READ FULL TEXT

page 8

page 9

research
01/28/2019

Bipartite Envy-Free Matching

Bipartite Envy-Free Matching (BEFM) is a relaxation of perfect matching....
research
06/08/2017

Content-Based Table Retrieval for Web Queries

Understanding the connections between unstructured text and semi-structu...
research
01/24/2020

Enhancing OBDA Query Translation over Tabular Data with Morph-CSV

Ontology-Based Data Access (OBDA) has traditionally focused on providing...
research
04/15/2010

Propagating Conjunctions of AllDifferent Constraints

We study propagation algorithms for the conjunction of two AllDifferent ...
research
07/13/2018

Maintaning maximal matching with lookahead

In this paper we study the problem of fully dynamic maximal matching wit...
research
09/21/2021

Deep Policies for Online Bipartite Matching: A Reinforcement Learning Approach

From assigning computing tasks to servers and advertisements to users, s...

Please sign up or login with your details

Forgot password? Click here to reset