<resource xmlns:datacite="http://datacite.org/schema/kernel-4">
<creators>
<creator>
<creatorName nameType="Personal">Alexander Ryusandi Pratama</creatorName>
<givenName>Alexander Ryusandi</givenName>
<familyName>Pratama</familyName>
</creator>
</creators>
<contributors>
<contributor contributorType="Other">
<contributorName>Adam Zaremba</contributorName>
<givenName>Adam</givenName>
<familyName>Zaremba</familyName>
</contributor>
<contributor contributorType="Other">
<contributorName>Ruihai Dong</contributorName>
<givenName>Ruihai</givenName>
<familyName>Dong</familyName>
</contributor>
</contributors>
<titles>
<title>Beyond linear models: Explainable AI for merger &amp; acquisition outcome prediction</title>
</titles>
<descriptions>
<description descriptionType="Other">This study investigates the effi cacy of the Tabular Prior-informed Bayesian Neural Network (TabPFN) for predicting Merger and Acquisition (M&amp;A) outcomes, positioning it as a transparent alternative to opaque "black-box" models within regulated fi nancial domains. The performance of TabPFN is benchmarked against fi ve established models: Logistic Regression (LR), Random Forest (RF), Gradient Boosting (GB), Support Vector Machine (SVM), and Multilayer Perceptron (MLP) on a curated dataset of 4,400 historical U.S. M&amp;A transactions. The central evaluation assesses predictive discrimination (AUC-ROC) and probability calibration (Expected Calibration Error). Results demonstrate that TabPFN achieves superior discriminative performance (AUC-ROC: 0.9168) and strong calibration (ECE: 0.0676). Furthermore, SHAP-based explainability analysis of the TabPFN model reveals crucial non-linear feature eff ects, such as the interplay between deal attitude and completion time, that are not apparent in linear models. The fi ndings establish TabPFN as a robust and interpretable framework for M&amp;A risk assessment, aligning with the principles of trustworthy AI for high-stakes fi nancial applications.
The primary aim was to assess diff erences in predictive discrimination (AUC-ROC), probability calibration (ECE), and explanatory insights. Empirical fi ndings revealed TabPFN achieved the highest discriminative performance (AUC-ROC: 0.9168), outperforming LR (0.7171) and other baselines. TabPFN also demonstrated strong probability calibration (ECE: 0.0676), signifi cantly better than LR (ECE: 0.1372), although RF exhibited the best ECE (0.0299). SHAP analysis of TabPFN identifi ed 'realized_return' as a key predictor for the tested instances and elucidated crucial non-linear feature eff ects not apparent from linear models; the initial feature pruning, guided by Random Forest, highlighted the general importance of factors including 'attitude_Friendly' and 'completion_time' for the prediction task.
This study concludes that TabPFN's superior discriminative performance and strong calibration, synergistically combined with XAI techniques, provide a more valuable and actionable tool for M&amp;A strategic decision-making. The enhanced probabilistic reliability and transparent, granular feature-level explanations off er a robust foundation for risk assessment within the TISE framework, aligning with demands for trustworthy AI in high-stakes fi nancial applications</description>
</descriptions>
<resourceType resourceTypeGeneral="Text">PDFDocument</resourceType>
<language>eng</language>
<dates>
<date dateType="Created">2025-10-08T09:55:45.123106Z</date>
<date dateType="Created">2025</date>
</dates>
<subjects>
<subject>Mergers and Acquisitions (M&amp;A) Outcome Prediction</subject>
<subject>Explainable Artifi cial Intelligence (XAI)</subject>
<subject>Tabular Prior-informed Bayesian Neural Network (TabPFN)</subject>
<subject>Probability Calibration</subject>
<subject>SHapley Additive exPlanations (SHAP)</subject>
</subjects>
<sizes>
<size>2101810 b</size>
</sizes>
<formats>
<format>application/pdf</format>
</formats>
<rightsList>
<rights rightsURI="http://rightsstatements.org/vocab/InC/1.0/">http://rightsstatements.org/vocab/InC/1.0/</rights>
</rightsList>
</resource>
