Valorization is one of the most heated discussions in the business community, and commodities valorization is one subset in this task. Features of a product is an essential characteristic in valorization and features are categorized into two classes: graphical and non-graphical. Nowadays, the value of products is measured by price. The goal of this research is to achieve an arrangement to predict the price of a product based on specifications of that. We propose five deep learning models to predict the price range of a product, one unimodal and four multimodal systems. The multimodal methods predict based on the image and non-graphical specification of product. As a platform to evaluate the methods, a cellphones dataset has been gathered from GSMArena. In proposed methods, convolutional neural network is an infrastructure. The experimental results show 88.3% F1-score in the best method.
翻译:估价是商业界最热的讨论之一,商品的降价是这一任务中的一个子集。产品的特点是估价的一个基本特征,特性分为两类:图形和非图形。现在,产品的价值是按价格衡量的。这一研究的目的是达成一种安排,根据产品的具体要求预测产品的价格。我们提出了五种深层次的学习模型,以预测产品的价格范围,一种单一方式和四种多式联运系统。多式联运方法根据产品的图像和非图形规格预测。作为评价方法的平台,从GSMArena收集了一个手机数据集。在建议的方法中,革命神经网络是一种基础设施。实验结果显示88.3%的F1核心为最佳方法。