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Local Interpretable Model-Agnostic Explanations for Neural Ranking Models
KTH, School of Electrical Engineering and Computer Science (EECS), Computer Science, Software and Computer systems, SCS.ORCID iD: 0000-0002-6846-5707
Faculty of Social Sciences, Department of Computer and Systems Sciences, Stockholm University, Sweden.
Faculty of Social Sciences, Department of Computer and Systems Sciences, Stockholm University, Sweden.
Spotify, Stockholm, Sweden.ORCID iD: 0000-0001-5759-7846
2024 (English)In: 14th Scandinavian Conference on Artificial Intelligence SCAI 2024, 2024Conference paper, Published paper (Refereed) [Artistic work]
Abstract [en]

Neural Ranking Models have shown state-of-the-art performance in Learning-To-Rank (LTR) tasks. However, they are considered black-box models. Understanding the logic behind the predictions of such black-box models is paramount for their adaptability in the real-world and high-stake decision-making domains. Local explanation techniques can help us understand the importance of features in the dataset relative to the predicted output of these black-box models. This study investigates new adaptations of Local Interpretable Model-Agnostic Explanation (LIME) explanation for explaining Neural ranking models. To evaluate our proposed explanation, we explain Neural GAM models. Since these models are intrinsically interpretable Neural Ranking Models, we can directly extract their ground truth importance scores. We show that our explanation of Neural GAM models is more faithful than explanation techniques developed for LTR applications such as LIRME and EXS and non-LTR explanation techniques for regression models such as LIME and KernelSHAP using measures such as Rank Biased Overlap (RBO) and Overlap AUC. Our analysis is performed on the Yahoo! Learning-To-Rank Challenge dataset.

Place, publisher, year, edition, pages
2024.
National Category
Electrical Engineering, Electronic Engineering, Information Engineering
Identifiers
URN: urn:nbn:se:kth:diva-360223OAI: oai:DiVA.org:kth-360223DiVA, id: diva2:1939050
Conference
14th Scandinavian Conference on Artificial Intelligence SCAI 2024, Jönköping University, 10-11 Jun 2024
Note

QC 20250220

Available from: 2025-02-20 Created: 2025-02-20 Last updated: 2025-02-20Bibliographically approved
In thesis
1. Evaluating the Faithfulness of Local Feature Attribution Explanations: Can We Trust Explainable AI?
Open this publication in new window or tab >>Evaluating the Faithfulness of Local Feature Attribution Explanations: Can We Trust Explainable AI?
2025 (English)Doctoral thesis, comprehensive summary (Other academic)
Abstract [en]

Black-box models have demonstrated incredible performance and accuracy across various modeling problems and benchmarks over the past decade, from detecting objects in images to generating intelligent responses to user queries. Despite their impressive performance, these models suffer from a lack of interpretability, making it difficult to understand their decision-making processes and diagnose errors, which limits their applicability, especially in high-stakes domains such as healthcare and law. Explainable Artificial Intelligence (xAI) is a set of techniques, tools, and algorithms that bring transparency to black-box machine learning models. This transparency is said to bring trust to the users and, as a result, help deploy these models in high-stake decision-making domains. One of the most popular categories of xAI algorithms is local explanation techniques, where the information about the prediction of a black box for a single data instance. One of the most consequential open research problems for local explanation techniques is the evaluation of these techniques. This is mainly because we cannot directly extract ground truth explanations from complex black-box models to evaluate these techniques. In this thesis, we focus on a systematic evaluation of local explanation techniques. In the first part, we investigate whether local explanations, such as LIME, fail systematically or if failures only occur in a few cases. We then discuss the implicit and explicit assumptions behind different evaluation measures for local explanations. Through this analysis, we aim to present a logic for choosing the most optimal evaluation measure in various cases. After that, we proposea new evaluation framework called Model-Intrinsic Additive Scores (MIAS) for extracting ground truth explanations from different black-box models for regression, classification, and learning-to-rank models. Next, we investigate the faithfulness of explanations of tree ensemble models using perturbation-based evaluation measures. These techniques do not rely on the ground truth explanations. The last part of this thesis focuses on a detailed investigation into the faithfulness of local explanations of LambdaMART, a tree-based ensemble learning-to-rank model. We are particularly interested in studying whether techniques built specifically for explaining learning-to-rank models are more faithful than their regression-based counterparts for explaining LambdaMART. For this, we have included evaluation measures that rely on ground truth along with those that do not rely on the ground truth. This thesis presents several influential conclusions. First, we find that failures in local explanation techniques, such as LIME, occur more frequently and systematically, and we explore the mechanisms behind these failures. Furthermore, we demonstrate that evaluating local explanations using ground truth extracted from interpretable models mitigates the risk of blame, where explanations might be wrongfully criticized for lacking faithfulness. We also show that local explanations provide faithful insights for linear regression but not for classification models, such as Logistic Regression and Naive Bayes, or ranking models, such as Neural Ranking Generalized Additive Models (GAMs). Additionally, our results indicate that KernelSHAP and LPI deliver faithful explanations for treebased ensemble models, such as Gradient Boosting and Random Forests, when evaluated with measures independent of ground truth. Lastly, we establish that regression-based explanations for learning-to-rank models consistently outperform ranking-based explanation techniques in explaining LambdaMART. Our conclusion includes a mix of ground truth-dependent and perturbation-based evaluation measures that do not rely on ground truth.

Place, publisher, year, edition, pages
Stockholm: KTH Royal Institute of Technology, 2025. p. 80
Series
TRITA-EECS-AVL ; 2025:23
Keywords
xai, artificial intelligene, machine learning
National Category
Electrical Engineering, Electronic Engineering, Information Engineering
Research subject
Information and Communication Technology
Identifiers
urn:nbn:se:kth:diva-360228 (URN)978-91-8106-200-7 (ISBN)
Public defence
2025-03-14, Sal C, Ka-Sal C (Sven-Olof Öhrvik), Stockholm, 13:00 (English)
Opponent
Supervisors
Note

QC 20250220

Available from: 2025-02-20 Created: 2025-02-20 Last updated: 2025-03-05Bibliographically approved

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