Leveraging Multiple Relations for Fashion Trend Forecasting Based on
Social Media
- URL: http://arxiv.org/abs/2105.03299v2
- Date: Tue, 11 May 2021 07:41:25 GMT
- Title: Leveraging Multiple Relations for Fashion Trend Forecasting Based on
Social Media
- Authors: Yujuan Ding, Yunshan Ma, Lizi Liao, Wai Keung Wong, Tat-Seng Chua
- Abstract summary: We propose an improved model named Relation Enhanced Attention Recurrent (REAR) network.
Compared to KERN, the REAR model leverages not only the relations among fashion elements but also those among user groups.
To further improve the performance of long-range trend forecasting, the REAR method devises a sliding temporal attention mechanism.
- Score: 72.06420633156479
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Fashion trend forecasting is of great research significance in providing
useful suggestions for both fashion companies and fashion lovers. Although
various studies have been devoted to tackling this challenging task, they only
studied limited fashion elements with highly seasonal or simple patterns, which
could hardly reveal the real complex fashion trends. Moreover, the mainstream
solutions for this task are still statistical-based and solely focus on
time-series data modeling, which limit the forecast accuracy. Towards
insightful fashion trend forecasting, previous work [1] proposed to analyze
more fine-grained fashion elements which can informatively reveal fashion
trends. Specifically, it focused on detailed fashion element trend forecasting
for specific user groups based on social media data. In addition, it proposed a
neural network-based method, namely KERN, to address the problem of fashion
trend modeling and forecasting. In this work, to extend the previous work, we
propose an improved model named Relation Enhanced Attention Recurrent (REAR)
network. Compared to KERN, the REAR model leverages not only the relations
among fashion elements but also those among user groups, thus capturing more
types of correlations among various fashion trends. To further improve the
performance of long-range trend forecasting, the REAR method devises a sliding
temporal attention mechanism, which is able to capture temporal patterns on
future horizons better. Extensive experiments and more analysis have been
conducted on the FIT and GeoStyle datasets to evaluate the performance of REAR.
Experimental and analytical results demonstrate the effectiveness of the
proposed REAR model in fashion trend forecasting, which also show the
improvement of REAR compared to the KERN.
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