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A New Technique for AI Explainability using Feature Association Map

About

Lack of transparency in AI systems poses challenges in critical real-life applications. It is important to be able to explain the decisions of an AI system to ensure trust on the system. Explainable AI (XAI) algorithms play a vital role in achieving this objective. In this paper, we are proposing a new algorithm for Explaining AI systems, FAMeX (Feature Association Map based eXplainability). The proposed algorithm is based on a graph-theoretic formulation of the feature set termed as Feature Association Map (FAM). The foundation of the modelling is based on association between features. The proposed FAMeX algorithm has been found to be better than the competing XAI algorithms - Permutation Feature Importance (PFI) and SHapley Additive exPlanations (SHAP). Experiments conducted with eight benchmark algorithms show that FAMeX is able to gauge feature importance in the context of classification better than the competing algorithms. This definitely shows that FAMeX is a promising algorithm in explaining the predictions from an AI system

Sayantani Ghosh, Amit Kumar Das, Amlan Chakrabarti• 2026

Related benchmarks

TaskDatasetResultRank
Classificationvehicle
Accuracy64.74
65
ClassificationWisconsin
Accuracy95.14
59
ClassificationWDBC
Accuracy92.26
26
ClassificationAggregated Datasets (Wisconsin, ILPD, Pageblocks, Pima, Apndcts, WineQuality, WBDC, Vehicle)
Average Accuracy80.16
24
ClassificationILPD
Accuracy70.72
24
Classificationpima
Accuracy75.55
18
ClassificationApndcts
Accuracy87.68
18
ClassificationWineQuality
Accuracy65.16
18
Multi-class classificationPageblocks--
15
ClassificationPage-blocks--
10
Showing 10 of 18 rows

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