Capturing and Anticipating User Intents in Data Analytics via Knowledge Graphs
Gerard Pons, Besim Bilalli, Anna Queralt

TL;DR
This paper investigates using knowledge graphs to model and anticipate user intents in data analytics workflows, aiming to improve user assistance and recommendations in intelligent discovery systems.
Contribution
It introduces a novel approach employing knowledge graphs and link prediction techniques to better capture user workflows and provide tailored support in data analytics tools.
Findings
Knowledge graphs effectively model complex analytics workflows.
Link prediction enhances recommendation flexibility.
Proposed methods produce sensible suggestions based on graph structure.
Abstract
In today's data-driven world, the ability to extract meaningful information from data is becoming essential for businesses, organizations and researchers alike. For that purpose, a wide range of tools and systems exist addressing data-related tasks, from data integration, preprocessing and modeling, to the interpretation and evaluation of the results. As data continues to grow in volume, variety, and complexity, there is an increasing need for advanced but user-friendly tools, such as intelligent discovery assistants (IDAs) or automated machine learning (AutoML) systems, that facilitate the user's interaction with the data. This enables non-expert users, such as citizen data scientists, to leverage powerful data analytics techniques effectively. The assistance offered by IDAs or AutoML tools should not be guided only by the analytical problem's data but should also be tailored to each…
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