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Article Dans Une Revue Machine Learning with Applications Année : 2022

A comprehensive review of stacking methods for semantic similarity measurement

Résumé

This article presents a comprehensive review of stacking methods commonly used to address the challenge of automatic semantic similarity measurement in the literature. Since more than two decades of research have left various semantic similarity measures, scientists and practitioners often find many difficulties in choosing the best method to put into production. For this reason, a novel generation of strategies has been proposed to use basic semantic similarity measures using base estimators to achieve a better performance than could be gained from any of the semantic similarity measures. In this work, we analyze different stacking techniques, ranging from the classical algebraic methods to the most powerful ones based on hybridization, including blending, neural, fuzzy, and genetic-based stacking. Each technique excels in aspects such as simplicity, robustness, accuracy, interpretability, transferability, or a favorable combination of several of those aspects. The goal is that the reader can have an overview of the state-of-the-art in this field.

Dates et versions

hal-03853268 , version 1 (15-11-2022)

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Jorge Martinez-Gil. A comprehensive review of stacking methods for semantic similarity measurement. Machine Learning with Applications, 2022, 10, pp.100423. ⟨10.1016/j.mlwa.2022.100423⟩. ⟨hal-03853268⟩
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