LAMEE:用于时间序列预测的轻型全 MLP 框架授权建议

Yi Xie, Yun Xiong, Xiaofeng Gao, Jiadong Chen, Yao Zhang, Xian Wu, Chao Chen
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引用次数: 0

摘要

与推荐系统本身无关的外生变量可以显著提高推荐系统的性能。因此,将这些随时间变化的外生变量整合到时间序列中并进行时间序列预测,可以最大限度地发挥推荐系统的潜力。我们把这项任务称为时间序列预测增强推荐(TSPER)。然而,作为推荐系统中的一个子任务,TSPER 面临着独特的挑战,如计算和数据限制、系统演变以及对性能和可解释性的需求。为了满足这些独特的需求,我们提出了一种具有联合时频信息的轻量级多层感知器架构,命名为具有联合时频信息的轻量级全 MLP(LAMEE)。LAMEE 利用轻量级 MLP 架构实现计算效率和自适应在线学习。此外,LAMEE 还采用了多种策略来改进模型,以确保性能稳定和模型可解释性。在多个可能与推荐系统相关的时间序列数据集上,LAMEE 平衡了性能、效率和可解释性,整体上超越了现有的复杂方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

LAMEE: a light all-MLP framework for time series prediction empowering recommendations

LAMEE: a light all-MLP framework for time series prediction empowering recommendations

Exogenous variables, unrelated to the recommendation system itself, can significantly enhance its performance. Therefore, integrating these time-evolving exogenous variables into a time series and conducting time series predictions can maximize the potential of recommendation systems. We refer to this task as Time Series Prediction Empowering Recommendations (TSPER). However, as a subtask within the recommendation system, TSPER faces unique challenges such as computational and data constraints, system evolution, and the need for performance and interpretability. To meet these unique needs, we propose a lightweight Multi-Layer Perceptron architecture with joint Time-Frequency information, named Light All-MLP with joint TimE-frEquency information (LAMEE). LAMEE utilizes a lightweight MLP architecture to achieve computing efficiency and adaptive online learning. Moreover, various strategies have been employed to improve the model, ensuring stable performance and model interpretability. Across multiple time series datasets potentially related to recommendation systems, LAMEE balances performance, efficiency, and interpretability, overall surpassing existing complex methods.

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