NIGTLGJan 5, 2024

LMaaS: Exploring Pricing Strategy of Large Model as a Service for Communication

arXiv:2401.02675v18 citationsh-index: 4IEEE Trans Mob Comput
Originality Incremental advance
AI Analysis

This addresses the complex trading and pricing challenges for service providers and customers in deploying large models for communication, though it is incremental in applying game theory to a new domain.

The paper tackles the pricing optimization problem for Large Model as a Service (LMaaS) in intelligent communication by formulating it as a Stackelberg game, proposing an Iterative Model Pricing algorithm and a robust selecting and renting algorithm, with experiments confirming their effectiveness and robustness.

The next generation of communication is envisioned to be intelligent communication, that can replace traditional symbolic communication, where highly condensed semantic information considering both source and channel will be extracted and transmitted with high efficiency. The recent popular large models such as GPT4 and the boosting learning techniques lay a solid foundation for the intelligent communication, and prompt the practical deployment of it in the near future. Given the characteristics of "training once and widely use" of those multimodal large language models, we argue that a pay-as-you-go service mode will be suitable in this context, referred to as Large Model as a Service (LMaaS). However, the trading and pricing problem is quite complex with heterogeneous and dynamic customer environments, making the pricing optimization problem challenging in seeking on-hand solutions. In this paper, we aim to fill this gap and formulate the LMaaS market trading as a Stackelberg game with two steps. In the first step, we optimize the seller's pricing decision and propose an Iterative Model Pricing (IMP) algorithm that optimizes the prices of large models iteratively by reasoning customers' future rental decisions, which is able to achieve a near-optimal pricing solution. In the second step, we optimize customers' selection decisions by designing a robust selecting and renting (RSR) algorithm, which is guaranteed to be optimal with rigorous theoretical proof. Extensive experiments confirm the effectiveness and robustness of our algorithms.

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