核心概念
The core message of this paper is to jointly optimize content caching and recommendation in a wireless network using a combinatorial multi-armed bandit (CMAB) framework to maximize cache hit performance.
摘要
The paper presents a system model for content caching with recommendations in a wireless network, where a base station with a finite-capacity cache serves a set of users. The authors formulate the cache hit optimization problem as a CMAB, where the base station needs to decide which contents to cache and recommend to the users.
The key highlights are:
- The authors propose a UCB-based algorithm to solve the CMAB problem and provide an upper bound on the regret of the algorithm.
- The recommendation strategy shapes the users' content request behaviors, which in turn impacts the caching decisions. The authors show that jointly optimizing caching and recommendation can lead to better performance compared to independent strategies.
- The authors consider two cases for the recommendation-induced preference distribution: uniform and Zipf distribution. They show that the proposed algorithm performs well in both cases.
- Numerical results demonstrate the superior performance of the proposed algorithm compared to existing approaches like CMAB-UCB, ε-Greedy, and Greedy algorithms.
統計資料
The cache capacity is limited to C contents.
The base station can recommend at most R contents to each user, where R ≤ C.
The request probability of user u for content i is modeled as a convex combination of the user's original preference distribution and the recommendation-induced preference distribution.
引述
"Recommendation can thus be used to increase cache hits."
"Caching decision also influences recommendation."