FeatureEnVi: Visual Analytics for Feature Engineering Using Stepwise Selection and Semi-Automatic Extraction Approaches
Angelos Chatzimparmpas, Rafael M. Martins, Kostiantyn Kucher, Andreas, Kerren

TL;DR
FeatureEnVi is a visual analytics tool designed to enhance feature engineering in machine learning by supporting feature selection, transformation, and experimentation with a focus on interpretability and validation.
Contribution
The paper introduces FeatureEnVi, a novel visual analytics system that aids in feature engineering through stepwise selection, semi-automatic extraction, and interactive exploration.
Findings
Effective in selecting important features
Facilitates transformation of features into powerful alternatives
Supports exploration of feature combinations and their impact
Abstract
The machine learning (ML) life cycle involves a series of iterative steps, from the effective gathering and preparation of the data, including complex feature engineering processes, to the presentation and improvement of results, with various algorithms to choose from in every step. Feature engineering in particular can be very beneficial for ML, leading to numerous improvements such as boosting the predictive results, decreasing computational times, reducing excessive noise, and increasing the transparency behind the decisions taken during the training. Despite that, while several visual analytics tools exist to monitor and control the different stages of the ML life cycle (especially those related to data and algorithms), feature engineering support remains inadequate. In this paper, we present FeatureEnVi, a visual analytics system specifically designed to assist with the feature…
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Taxonomy
MethodsFeature Selection
