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
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.
Mar-16-2018
- Country:
- Asia > India (0.28)
- South America > Brazil
- Rio de Janeiro (0.14)
- Genre:
- Research Report (1.00)
- Technology: