基于大数据的用户行为分析方法

Yuan Sun
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引用次数: 1

摘要

随着互联网的发展进步和疫情的恶化,越来越多的人决定在网上购物。在线电子商务业务正在迅速扩张。了解用户的购买行为是增加销售和改善网站设计和流程的关键组成部分。我们使用阿里云天池的用户行为数据。数据随机抽取了2017年11月25日至12月27日期间约100万有页面浏览、购买、购物车和添加收藏行为的用户。总共有1000万条记录。我们使用了四个维度来解决这个问题:时间、项目、来自漏斗分析的转化率,以及来自RFM模型的有价值客户。从时间维度来看,用户更有可能在周末上午10点到下午3点访问页面。从商品维度来看,排名前十的商品在这段时间内被购买了超过100次。这个数字在2017年就很突出。对于来自Funnel Analysis的转化率,将商品添加到购物车中比将商品标记为收藏夹具有更高的转化率。对于客户维度,我们使用RFM(最近、频率、货币)模型来识别有价值的用户。我们可以建议淘宝改进收藏品剩余流程,增加高峰时段和周内热销商品的曝光率,并为有价值的客户提供更多的促销/推荐。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A User Behavior Analysis Method Based on Big Data
With the developing progress of the Internet and the pandemic deterioration, more people decide to shop online. The online eCommerce business is quickly expanding. Understanding users’ purchase behavior is a key component to growing sales and improving the website’s design and flow. We use User Behavior Data from Tianchi of Alibaba Cloud. The data were randomly selected about one million users who have behaviors of page view, purchase, shopping to cart, and adding to favorite during November 25 to December 27, 2017. There are a total of ten million records. We used four dimensions to approach this problem: time, item, conversion rate from Funnel Analysis, and valuable customers from RFM Model. From the time dimension, users are more likely to visit pages during the weekends from 10 am to 3 pm. From the item dimension, the top ten items were purchased over one hundred times during this time frame. The number is outstanding back in 2017. For the conversion rate from Funnel Analysis, adding items into the cart has a higher conversion rate compared to marking items as favorites. For the customer dimension, we used an RFM (recency, frequency, monetary) model to identify valuable users. We can advise Taobao to improve the favorite item remainder process, increase the exposure of hot selling items during peak hours and week of the day, and offer more promotions/recommendations to valuable customers.
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