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 ...
Compared to other retail industries, fashion retail industry faces many challenges to foresee future...
none3noWe here propose to collect and analyze large amounts of multimedia data from different public...
In this paper, we provide an idea about how to utilize the deep neural network with large scale soci...
Estimating the preferences of consumers is of utmost importance for the fashion industry as appropri...
eTryon’s WP3 is centered around building systems for 1) pattern recognition in fashion imagery, 2) f...
Being able to forecast the popularity of new garment designs is very important in an industry as fas...
We present Visuelle 2.0, the first dataset useful for facing diverse prediction problems that a fast...
In this paper, we aim to better understand the clothing fashion styles. There remain two challenges ...
We present Visuelle 2.0, the first dataset useful for facing diverse prediction problems that a fast...
This paper aims to discuss the current state of Google Trends as a useful tool for fashion consumer ...
In time-series forecasting, statistical methods and various newly emerged models, such as artificial...
Abstract The word vintage is generally accepted to mean clothing produced in the period between 192...
Compared to other industries, fashion apparel retail faces many challenges in predicting future dema...
By improving the accuracy of sales forecasting, this paper provides support for fashion product sale...
This paper aims to discuss the current state of Google Trends as a useful tool for fashion consumer ...
Compared to other retail industries, fashion retail industry faces many challenges to foresee future...
none3noWe here propose to collect and analyze large amounts of multimedia data from different public...
In this paper, we provide an idea about how to utilize the deep neural network with large scale soci...
Estimating the preferences of consumers is of utmost importance for the fashion industry as appropri...
eTryon’s WP3 is centered around building systems for 1) pattern recognition in fashion imagery, 2) f...
Being able to forecast the popularity of new garment designs is very important in an industry as fas...
We present Visuelle 2.0, the first dataset useful for facing diverse prediction problems that a fast...
In this paper, we aim to better understand the clothing fashion styles. There remain two challenges ...
We present Visuelle 2.0, the first dataset useful for facing diverse prediction problems that a fast...
This paper aims to discuss the current state of Google Trends as a useful tool for fashion consumer ...
In time-series forecasting, statistical methods and various newly emerged models, such as artificial...
Abstract The word vintage is generally accepted to mean clothing produced in the period between 192...
Compared to other industries, fashion apparel retail faces many challenges in predicting future dema...
By improving the accuracy of sales forecasting, this paper provides support for fashion product sale...
This paper aims to discuss the current state of Google Trends as a useful tool for fashion consumer ...
Compared to other retail industries, fashion retail industry faces many challenges to foresee future...
none3noWe here propose to collect and analyze large amounts of multimedia data from different public...
In this paper, we provide an idea about how to utilize the deep neural network with large scale soci...