Multimodal Quasi-AutoRegression: Forecasting the visual popularity of new fashion products

8 Apr 2022  ยท  Stefanos I. Papadopoulos, Christos Koutlis, Symeon Papadopoulos, Ioannis Kompatsiaris ยท

Estimating the preferences of consumers is of utmost importance for the fashion industry as appropriately leveraging this information can be beneficial in terms of profit. Trend detection in fashion is a challenging task due to the fast pace of change in the fashion industry. Moreover, forecasting the visual popularity of new garment designs is even more demanding due to lack of historical data. To this end, we propose MuQAR, a Multimodal Quasi-AutoRegressive deep learning architecture that combines two modules: (1) a multi-modal multi-layer perceptron processing categorical, visual and textual features of the product and (2) a quasi-autoregressive neural network modelling the "target" time series of the product's attributes along with the "exogenous" time series of all other attributes. We utilize computer vision, image classification and image captioning, for automatically extracting visual features and textual descriptions from the images of new products. Product design in fashion is initially expressed visually and these features represent the products' unique characteristics without interfering with the creative process of its designers by requiring additional inputs (e.g manually written texts). We employ the product's target attributes time series as a proxy of temporal popularity patterns, mitigating the lack of historical data, while exogenous time series help capture trends among interrelated attributes. We perform an extensive ablation analysis on two large scale image fashion datasets, Mallzee and SHIFT15m to assess the adequacy of MuQAR and also use the Amazon Reviews: Home and Kitchen dataset to assess generalisability to other domains. A comparative study on the VISUELLE dataset, shows that MuQAR is capable of competing and surpassing the domain's current state of the art by 4.65% and 4.8% in terms of WAPE and MAE respectively.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Popularity Forecasting SHIFT15M MuQAR MAE 0.1100 # 7
PCC 0.3934 # 1
Accuracy 63.57 # 1
Popularity Forecasting SHIFT15M CNN MAE 0.1148 # 4
PCC 0.3406 # 3
Accuracy 61.51 # 3
Popularity Forecasting SHIFT15M ConvLSTM MAE 0.1147 # 6
PCC 0.3411 # 2
Accuracy 61.58 # 2
Popularity Forecasting SHIFT15M Transformer MAE 0.1149 # 3
PCC 0.3398 # 4
Accuracy 61.28 # 4
Popularity Forecasting SHIFT15M ConvLSTM+X MAE 0.1185 # 2
PCC 0.2191 # 6
Accuracy 59.50 # 7
Popularity Forecasting SHIFT15M DA-RNN MAE 0.1187 # 1
PCC 0.2050 # 7
Accuracy 59.55 # 6
Popularity Forecasting SHIFT15M FusionMLP MAE 0.1148 # 4
PCC 0.2811 # 5
Accuracy 60.89 # 5
New Product Sales Forecasting VISUELLE MuQAR MAE 28.75 # 2
WAPE 52.63 # 2

Methods