Hypothesis Testing: How to Eliminate Ideas as Soon as Possible

Roman Zykov
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Abstract

Retail Rocket helps web shoppers make better shopping decisions by providing personalized real-time recommendations through multiple channels with over 100MM unique monthly users and 1000+ retail partners. The rapid improvement of the product is important to win on the high-concurrency market of real-time personalization platforms. The necessity of introducing constant innovations and improvements of algorithms for recommendation systems requires correct tools and a process of rapid testing of hypotheses. It's not a secret that 9 out of 10 hypotheses actually do not improve the performance at least. We had the task stated as follows: How to detect and eliminate the idea that doesn't improve as early as possible, to spend a minimum of resources on that process. In the report we will talk about: How we make our process of hypotheses testing faster. One programming language for R&D. Enmity and friendship of offline and online metrics. Why it is difficult to predict the impact of changing diversity of algorithms. What is the benefit of AA/BB online tests. Bayesian statistics for the evaluation of online tests. Roman Zykov is the Chief Data Scientist at the Retail Rocket. In Retail Rocket is responsible for algorithms of personalized and non-personalized recommendations. Previous to Retail Rocket, Roman was the Head of analytics at the biggest e-commerce companies for almost ten years. He received Ms.Sc. in applied mathematics and physics from the MIPhT in 2004.
假设检验:如何尽快消除想法
Retail Rocket通过多个渠道提供个性化的实时推荐,帮助网络购物者做出更好的购物决策,拥有超过100万的月度独立用户和1000多家零售合作伙伴。产品的快速改进对于赢得实时个性化平台的高并发市场至关重要。为推荐系统引入不断创新和改进算法的必要性需要正确的工具和快速测试假设的过程。10个假设中有9个至少不能提高表现,这不是秘密。我们的任务是这样的:如何尽早发现和消除那些没有改进的想法,在这个过程中花费最少的资源。在报告中,我们将讨论:我们如何使我们的假设测试过程更快。一种用于研发的编程语言。线下和线上指标的敌意和友谊。为什么很难预测算法多样性变化的影响。AA/BB在线测试的好处是什么?用于在线测试评估的贝叶斯统计。Roman Zykov是Retail Rocket的首席数据科学家。在零售方面,Rocket负责个性化和非个性化推荐的算法。在加入Retail Rocket之前,Roman在大型电子商务公司担任了近十年的分析主管。他接待了sc女士。2004年获理工学院应用数学及物理学士学位。
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