Fundamental Limits of Stochastic Shared Caches Networks
Abstract
The work establishes the exact performance limits of stochastic coded caching when users share a bounded number of cache states, and when the association between users and caches, is random. Under the premise that more balanced user-to-cache associations perform better than unbalanced ones, our work provides a statistical analysis of the average performance of such networks, identifying in closed form, the exact optimal average delivery time. To insightfully capture this delay, we derive easy to compute closed-form analytical bounds that prove tight in the limit of a large number of cache states. In the scenario where delivery involves K users, we conclude that the multiplicative performance deterioration due to randomness -- as compared to the well-known deterministic uniform case -- can be unbounded and can scale as ( ) at K=(), and that this scaling vanishes when K=( ). To alleviate this adverse effect of cache-load imbalance, we consider various load balancing methods, and show that employing proximity-bounded load balancing with an ability to choose from h neighboring caches, the aforementioned scaling reduces to (( / h) ( / h) ), while when the proximity constraint is removed, the scaling is of a much slower order ( ). The above analysis is extensively validated numerically.