Developing models and algorithms to draw causal inference for time series is a long standing statistical problem. It is crucial for many applications, in particular for fashion or retail industries, to make optimal inventory decisions and avoid massive wastes. By tracking thousands of fashion trends on social media with state-of-the-art computer vision approaches, we propose a new model for fashion time series forecasting. Our contribution is twofold. We first provide publicly the first fashion dataset gathering 10000 weekly fashion time series. As influence dynamics are the key of emerging trend detection, we associate with each time series an external weak signal representing behaviors of influencers. Secondly, to leverage such a complex and rich dataset, we propose a new hybrid forecasting model. Our approach combines per-time-series parametric models with seasonal components and a global recurrent neural network to include sporadic external signals. This hybrid model provides state-of-the-art results on the proposed fashion dataset, on the weekly time series of the M4 competition, and illustrates the benefit of the contribution of external weak signals.
翻译:开发模型和算法以得出时间序列的因果推断是一个长期存在的统计问题,对于许多应用,特别是时装或零售业来说,作出最佳的库存决定和避免大规模浪费至关重要。通过跟踪社交媒体上数以千计的时装趋势,我们用最先进的计算机视觉方法提出了一个新的时装序列预测模式。我们的贡献是双重的。我们首先公开提供第一个时装数据集,收集每周10 000个时序序列。由于影响动态是发现新趋势的关键,我们联系每个时序中代表影响者行为的外部弱信号。第二,为了利用这样一个复杂而丰富的数据集,我们提出了一个新的混合预测模型。我们的方法是将时序参数模型与季节性元件和全球经常性神经网络结合起来,以纳入零星的外部信号。这种混合模型在M4竞赛的每周时间序列中提供了拟议的时装数据集的最新结果,并说明了外部弱信号的贡献的好处。