LGAICLCPMFJun 5, 2024

Filtered not Mixed: Stochastic Filtering-Based Online Gating for Mixture of Large Language Models

arXiv:2406.02969v2
Originality Incremental advance
AI Analysis

This addresses the challenge of dynamically selecting and combining LLMs for time-series forecasting, particularly in financial domains, offering a plug-and-play solution with theoretical guarantees, though it is incremental as it builds on existing MoE and filtering techniques.

The paper tackles the problem of adaptively combining multiple pre-trained Large Language Models (LLMs) for online time-series prediction by proposing MoE-F, a stochastic filtering-based gating mechanism that forecasts optimal weightings at each time step, achieving a 17% absolute and 48.5% relative F1 improvement over the best individual LLM in financial market movement prediction.

We propose MoE-F - a formalized mechanism for combining $N$ pre-trained Large Language Models (LLMs) for online time-series prediction by adaptively forecasting the best weighting of LLM predictions at every time step. Our mechanism leverages the conditional information in each expert's running performance to forecast the best combination of LLMs for predicting the time series in its next step. Diverging from static (learned) Mixture of Experts (MoE) methods, our approach employs time-adaptive stochastic filtering techniques to combine experts. By framing the expert selection problem as a finite state-space, continuous-time Hidden Markov model (HMM), we can leverage the Wohman-Shiryaev filter. Our approach first constructs N parallel filters corresponding to each of the $N$ individual LLMs. Each filter proposes its best combination of LLMs, given the information that they have access to. Subsequently, the N filter outputs are optimally aggregated to maximize their robust predictive power, and this update is computed efficiently via a closed-form expression, generating our ensemble predictor. Our contributions are: **(I)** the MoE-F plug-and-play filtering harness algorithm, **(II)** theoretical optimality guarantees of the proposed filtering-based gating algorithm (via optimality guarantees for its parallel Bayesian filtering and its robust aggregation steps), and **(III)** empirical evaluation and ablative results using state-of-the-art foundational and MoE LLMs on a real-world __Financial Market Movement__ task where MoE-F attains a remarkable 17\% absolute and 48.5\% relative F1 measure improvement over the next best performing individual LLM expert predicting short-horizon market movement based on streaming news. Further, we provide empirical evidence of substantial performance gains in applying MoE-F over specialized models in the long-horizon time-series forecasting domain.

Foundations

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