Performance-Oriented Association in Large Cellular Networks with Technology Diversity
Abishek Sankararaman, Jeong-woo Cho, Francois Baccelli

TL;DR
This paper develops a stochastic geometry framework to analyze and optimize user association policies in multi-technology cellular networks, introducing a simple yet effective Max-Ratio policy that balances performance and estimation costs.
Contribution
It introduces a generic model for analyzing association policies in multi-technology networks and proposes a simple, non-parametric Max-Ratio policy with proven optimality in certain regimes.
Findings
Performance improves with more network information.
Max-Ratio policy is near-optimal without statistical knowledge.
Simulations show trade-offs between performance and estimation costs.
Abstract
The development of mobile virtual network operators, where multiple wireless technologies (e.g. 3G and 4G) or operators with non-overlapping bandwidths are pooled and shared is expected to provide enhanced service with broader coverage, without incurring additional infrastructure cost. However, their emergence poses an unsolved question on how to harness such a technology and bandwidth diversity. This paper addresses one of the simplest questions in this class, namely, the issue of associating each mobile to one of those bandwidths. Intriguingly, this association issue is intrinsically distinct from those in traditional networks. We first propose a generic stochastic geometry model lending itself to analyzing a wide class of association policies exploiting various information on the network topology, e.g. received pilot powers and fading values. This model firstly paves the way for…
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