CLAX: Fast and Flexible Neural Click Models in JAX
By: Philipp Hager, Onno Zoeter, Maarten de Rijke
Potential Business Impact:
Makes computer ads understand user clicks better.
CLAX is a JAX-based library that implements classic click models using modern gradient-based optimization. While neural click models have emerged over the past decade, complex click models based on probabilistic graphical models (PGMs) have not systematically adopted gradient-based optimization, preventing practitioners from leveraging modern deep learning frameworks while preserving the interpretability of classic models. CLAX addresses this gap by replacing EM-based optimization with direct gradient-based optimization in a numerically stable manner. The framework's modular design enables the integration of any component, from embeddings and deep networks to custom modules, into classic click models for end-to-end optimization. We demonstrate CLAX's efficiency by running experiments on the full Baidu-ULTR dataset comprising over a billion user sessions in $\approx$ 2 hours on a single GPU, orders of magnitude faster than traditional EM approaches. CLAX implements ten classic click models, serving both industry practitioners seeking to understand user behavior and improve ranking performance at scale and researchers developing new click models. CLAX is available at: https://github.com/philipphager/clax
Similar Papers
CollEX -- A Multimodal Agentic RAG System Enabling Interactive Exploration of Scientific Collections
Information Retrieval
Helps people explore science collections easily.
DashCLIP: Leveraging multimodal models for generating semantic embeddings for DoorDash
Information Retrieval
Helps online stores show you better stuff.
CLAP: Coreference-Linked Augmentation for Passage Retrieval
Information Retrieval
Helps search engines find better answers faster.