群栈和漏斗过滤器在移动网上购物应用中的有效性

Pattarapong Bhongjan, S. Teeravarunyou
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摘要

使用现有的移动购物应用程序的体验是耗时的,因为购物清单上重复的图像是压倒性的信息。图像识别等新技术,是计算机视觉和人工智能的一个子类,可以检测和分析购物产品的类似图像。在这项研究中,研究者想要调查图像分组如何能提高购物体验。除图像分组外,还研究了滤波特征上的任务冗余问题。漏斗过滤器是一种可以帮助用户减少信息和任务步骤的设计。在这项研究中,受试者被要求测试消费产品的购物应用。31名参与者在时间和满意度方面测试了分组图片和随机图片。他们搜索特定类型的产品进行分组。在第二个实验中,受试者使用漏斗过滤器对价格范围、用户评分和运输成本等变量进行多层过滤。并将漏斗滤波器与现有的搜索滤波器进行了比较。实验结果表明,与现有的搜索项目相比,受试者更喜欢这组堆栈,因为这有助于减少他们在搜索时的信息量。这种技术遵循希克定律的原则。在第二个实验中,参与者更喜欢漏斗过滤器而不是现有的搜索过滤器。因为它是过滤层的积累,所以决策更容易。本研究的结果将有利于未来移动购物提升用户体验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Effectiveness of Group Stacks and Funnel Filter for Mobile Online Shopping Application
The experience of using the existing mobile shopping applications is time-consuming because repeated images on the shopping lists are overwhelming information. New technologies such as image recognition, a subcategory of computer vision and artificial intelligence, can detect and analyze similar images of shopping products. In this study, the researcher wanted to investigate how image grouping could enhance the shopping experience. Besides the image grouping, the problem of redundant tasks on the filter feature was another investigation. A funnel filter is a design that can help users reduce information and task steps. For this study, subjects were asked to test the shopping application of consumer products. Thirty-one participants tested the grouped images versus random items in terms of time and satisfaction. They searched for a specific type of product for grouping. For the second experiment, subjects used the funnel filter to do the multiple layer filters for variables such as price range, users’ rating, and shipping cost. The funnel filter was also compared with the existing searching filter. The results from the experiment showed that subjects preferred the group of stacks over the existing searching items since it helped reduce the amount of information when they were searching. This technique followed the principle of Hick's laws. In the second experiment, the participants preferred the funnel filter to the existing searching filter. Because it was an accumulation of filtering layers, the decision-making was easier. The results of this study will benefit mobile shopping that can enhance the users’ experience in future.
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