Recommender Systems (RSs) in real-world applications often deal with billions of user interactions daily. To capture the most recent trends effectively, it is common to update the model incrementally using only the newly arrived data. However, this may impede the model's ability to retain long-term information due to the potential overfitting and forgetting issues. To address this problem, we propose a novel Adaptive Sequential Model Generation (ASMG) framework, which generates a better serving model from a sequence of historical models via a meta generator. For the design of the meta generator, we propose to employ Gated Recurrent Units (GRUs) to leverage its ability to capture the long-term dependencies. We further introduce some novel strategies to apply together with the GRU meta generator, which not only improve its computational efficiency but also enable more accurate sequential modeling. By instantiating the model-agnostic framework on a general deep learning-based RS model, we demonstrate that our method achieves state-of-the-art performance on three public datasets and one industrial dataset.
翻译:现实应用中的建议系统(RSs)常常每天涉及数十亿个用户的相互作用。为了有效捕捉最新趋势,通常会使用新到的数据逐步更新模型,然而,这可能会妨碍模型保留长期信息的能力,因为有可能过度适应和忘记问题。为了解决这个问题,我们建议建立一个新的适应序列模型生成框架,通过元生成器从历史模型序列中产生更好的服务模式。为了设计元生成器,我们提议使用Ged 经常单元(GRUs)来利用其获取长期依赖性的能力。我们进一步引入一些新战略,与GRU元生成器一起应用,这不仅提高了计算效率,而且还使得能够更精确的顺序建模。我们通过在一般深层次学习的RS模型中即刻录出一个模型-认知框架,我们证明我们的方法在三个公共数据集和一个工业数据集中取得了最新业绩。