The study of symbolic syntactic interpretations has been the cornerstone of natural language understanding for many years. Today, modern artificial neural networks are widely searched to assess their syntactic ability, through several probing tasks. In this paper, we propose a neural network system that explicitly includes syntactic interpretations: Kernel-inspired Encoder with Recursive Mechanism for Interpretable Trees Visualizer (KERMITviz). The most important result is that KERMITviz allows to visualize how syntax is used in inference. This system can be used in combination with transformer architectures like BERT, XLNet and clarifies the use of symbolic syntactic interpretations in specific neural networks making the black-box neural network neural networks explainable, interpretable and clear.

KERMITviz: Visualizing Neural Network Activations on Syntactic Trees / Ranaldi, L.; Fallucchi, F.; Santilli, A.; Zanzotto, F. M.. - 1537:(2022), pp. 139-147. (Intervento presentato al convegno 15th International Conference on Metadata and Semantics Research, MTSR 2021 tenutosi a Londra, United Kingdom) [10.1007/978-3-030-98876-0_12].

KERMITviz: Visualizing Neural Network Activations on Syntactic Trees

Santilli A.;
2022

Abstract

The study of symbolic syntactic interpretations has been the cornerstone of natural language understanding for many years. Today, modern artificial neural networks are widely searched to assess their syntactic ability, through several probing tasks. In this paper, we propose a neural network system that explicitly includes syntactic interpretations: Kernel-inspired Encoder with Recursive Mechanism for Interpretable Trees Visualizer (KERMITviz). The most important result is that KERMITviz allows to visualize how syntax is used in inference. This system can be used in combination with transformer architectures like BERT, XLNet and clarifies the use of symbolic syntactic interpretations in specific neural networks making the black-box neural network neural networks explainable, interpretable and clear.
2022
15th International Conference on Metadata and Semantics Research, MTSR 2021
Explainable AI; Natural Language Processing; Neural Networks
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
KERMITviz: Visualizing Neural Network Activations on Syntactic Trees / Ranaldi, L.; Fallucchi, F.; Santilli, A.; Zanzotto, F. M.. - 1537:(2022), pp. 139-147. (Intervento presentato al convegno 15th International Conference on Metadata and Semantics Research, MTSR 2021 tenutosi a Londra, United Kingdom) [10.1007/978-3-030-98876-0_12].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1643085
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