An Online Gradient-Based Caching Policy with Logarithmic Complexity and Regret Guarantees
This work addresses a computational bottleneck for caching systems in dynamic environments, offering a scalable solution with theoretical guarantees, though it is incremental as it builds on existing gradient-based methods.
The paper tackles the problem of high computational complexity in online gradient-based caching policies by introducing a new variant with logarithmic complexity relative to catalog size, enabling testing on large-scale real-world traces with millions of requests and items and demonstrating practical benefits of regret guarantees.
Commonly used caching policies, such as LRU (Least Recently Used) or LFU (Least Frequently Used), exhibit optimal performance only under specific traffic patterns. Even advanced machine learning-based methods, which detect patterns in historical request data, struggle when future requests deviate from past trends. Recently, a new class of policies has emerged that are robust to varying traffic patterns. These algorithms address an online optimization problem, enabling continuous adaptation to the context. They offer theoretical guarantees on the regret metric, which measures the performance gap between the online policy and the optimal static cache allocation in hindsight. However, the high computational complexity of these solutions hinders their practical adoption. In this study, we introduce a new variant of the gradient-based online caching policy that achieves groundbreaking logarithmic computational complexity relative to catalog size, while also providing regret guarantees. This advancement allows us to test the policy on large-scale, real-world traces featuring millions of requests and items - a significant achievement, as such scales have been beyond the reach of existing policies with regret guarantees. To the best of our knowledge, our experimental results demonstrate for the first time that the regret guarantees of gradient-based caching policies offer substantial benefits in practical scenarios.