ARMDN: Associative and Recurrent Mixture Density Networks for eRetail Demand Forecasting

Mukherjee, Srayanta, Shankar, Devashish, Ghosh, Atin, Tathawadekar, Nilam, Kompalli, Pramod, Sarawagi, Sunita, Chaudhury, Krishnendu

arXiv.org Machine Learning 

Accurate demand forecasts can help on-line retail organizations better plan their supply-chain processes. The challenge, however, is the large number of associative factors that result in large, non-stationary shifts in demand, which traditional time series and regression approaches fail to model. In this paper, we propose a Neural Network architecture called AR-MDN, that simultaneously models associative factors, time-series trends and the variance in the demand. We first identify several causal features and use a combination of feature embeddings, MLP and LSTM to represent them. We then model the output density as a learned mixture of Gaussian distributions. The AR-MDN can be trained end-to-end without the need for additional supervision. We experiment on a dataset of an year's worth of data over tens-of-thousands of products from Flipkart. The proposed architecture yields a significant improvement in forecasting accuracy when compared with existing alternatives.

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