Abstract
We propose a sophisticated channel selection scheme based on multi-armed bandits and stochastic geometry analysis. In the proposed scheme, a typical user attempts to estimate the density of active interferers for every channel via the repeated observations of signal-to-interference power ratio (SIR), which demonstrates the randomness induced by randomized interference sources and fading effects. The purpose of this study involves enabling a typical user to identify the channel with the lowest density of active interferers while considering the communication quality during exploration. To resolve the trade-off between obtaining more observations on uncertain channels and using a channel that appears better, we employ a bandit algorithm called Thompson sampling (TS), which is known for its empirical effectiveness. We consider two ideas to enhance TS. First, noticing that the SIR distribution derived through stochastic geometry is useful for updating the posterior distribution of the density, we propose incorporating the SIR distribution into TS to estimate the density of active interferers. Second, TS requires sampling from the posterior distribution of the density for each channel, while it is significantly more complicated for the posterior distribution of the density to generate samples than well-known distribution. The results indicate that this type of sampling process is achieved via the Markov chain Monte Carlo method (MCMC). The simulation results indicate that the proposed method enables a typical user to determine the channel with the lowest density more efficiently than the TS without density estimation aided by stochastic geometry, and $\epsilon $ -greedy strategies.
Highlights
Given explosive growth in wireless communications, the existing wireless networks are insufficient to satisfy significant demand for broad-bandwidth access driven by modern mobile traffic, such as multimedia transmissions and cloud computing tasks [1]
We propose a framework to utilize the signal-to-interference power ratio (SIR) distribution derived by stochastic geometry as a reward distribution in Thompson sampling (TS)
We demonstrate that the proposed scheme resolves the exploration-exploitation trade-off more efficiently than the -greedy and the TS without density estimation aided by stochastic geometry through simulations
Summary
Given explosive growth in wireless communications, the existing wireless networks are insufficient to satisfy significant demand for broad-bandwidth access driven by modern mobile traffic, such as multimedia transmissions and cloud computing tasks [1]. To cope with the exponential growth of mobile broadband data traffic, an important issue involves enhancing the spectrum utilization is a serious issue (e.g., device to device communication, heterogeneous networks) [2]. Problem solutions include efficient channel selection that plays an important role in the adoption of interference mitigation and performance improvement. To efficiently identify the optimal available channel, a user should be able to monitor and sense the surroundings, and learn information about the unknown environment (e.g., the information about randomized interference source).
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