International Association for Cryptologic Research

International Association
for Cryptologic Research

IACR News item: 02 May 2024

Kelong Cong, Jiayi Kang, Georgio Nicolas, Jeongeun Park
ePrint Report ePrint Report
Privacy-preserving decision tree evaluation (PDTE) allows a client that holds feature vectors to perform inferences against a decision tree model on the server side without revealing feature vectors to the server. Our work focuses on the non-interactive batched setting where the client sends a batch of encrypted feature vectors and then obtains classifications, without any additional interaction. This is useful in privacy-preserving credit scoring, biometric authentication, and many more applications.

In this paper, we propose two novel non-interactive batched PDTE protocols, BPDTE_RCC and BPDTE_CW, based on two new ciphertext-plaintext comparison algorithms, the improved range cover comparison (RCC) comparator and the constant-weight (CW) piece-wise comparator, respectively. Compared to the current state-of-the-art Level Up (CCS'23), our comparison algorithms are up to $72\times$ faster for batched inputs of 16 bits. Moreover, we introduced a new tree traversal method called Adapted SumPath, to achieve $\mathcal{O}(1)$ complexity of the server's response, whereas Level Up has $\mathcal{O}(2^d)$ for a depth-$d$ tree where the client needs to look up classification values in a table. Overall, our PDTE protocols attain the optimal server-to-client communication complexity and are up to $17\times$ faster than Level Up in batch size 16384.
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