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Interpretability-by-Design with Accurate Locally Additive Models and Conditional Feature Effects

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Generalized additive models (GAMs) offer interpretability through independent univariate feature effects but underfit when interactions are present in data. GA$^2$Ms add selected pairwise interactions which improves accuracy, but sacrifices interpretability and limits model auditing. We propose \emph{Conditionally Additive Local Models} (CALMs), a new model class, that balances the interpretability of GAMs with the accuracy of GA$^2$Ms. CALMs allow multiple univariate shape functions per feature, each active in different regions of the input space. These regions are defined independently for each feature as simple logical conditions (thresholds) on the features it interacts with. As a result, effects remain locally additive while varying across subregions to capture interactions. We further propose a principled distillation-based training pipeline that identifies homogeneous regions with limited interactions and fits interpretable shape functions via region-aware backfitting. Experiments on diverse classification and regression tasks show that CALMs consistently outperform GAMs and achieve accuracy comparable with GA$^2$Ms. Overall, CALMs offer a compelling trade-off between predictive accuracy and interpretability.

Vasilis Gkolemis, Loukas Kavouras, Dimitrios Kyriakopoulos, Konstantinos Tsopelas, Dimitrios Rontogiannis, Giuseppe Casalicchio, Theodore Dalamagas, Christos Diou• 2026

Related benchmarks

TaskDatasetResultRank
ClassificationBank
Accuracy90.5
25
ClassificationHELOC
Mean Accuracy72.8
20
ClassificationCOMPAS
Accuracy68.4
15
RegressionBike Sharing 5-fold CV
RMSE55.67
14
Classificationmagic
Accuracy86.4
12
RegressionWine
RMSE0.69
12
Classificationphoneme
Accuracy86.1
11
Classificationappendicitis
Accuracy87.8
7
RegressionSensory 5-fold CV
RMSE0.45
7
ClassificationSPECTF
Accuracy89.4
7
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