- Lean Mobile App Development
- Mike van Drongelen Adam Dennis Richard Garabedian Alberto Gonzalez Aravind Krishnaswamy
- 283字
- 2021-07-02 22:58:59
Maintaining app ratings
If you've already got a significant user base on your app, you are likely pressured to maintain a 4+ rating on the app stores. App ratings determine the likelihood that your app may be featured prominently in listings and search results, which has a natural and direct correlation to your ability to expand your user base organically.
For instance, at a company like Intuit, despite the fact that there are a number of experiments that run during tax season, the pressure to keep ratings above 4.0-download rates decreases significantly as ratings drop:

Running experiments, which are necessary to evolve your app, can have uncertain impacts on the ratings.
Healthy ratings and ongoing experimentation are both necessary when applying the Lean approach to app development. However, since reduced ratings negatively impact user acquisition, you will need to find a way to minimize such impacts. Finding a balance between potentially disruptive experimentation and good ratings is an ongoing challenge, especially as an app matures.
In the early stages, moving fast and breaking things works well. However, for an established app with healthy ratings and a healthy user base, it can be difficult to rationalize experiments that could cut ratings. After all, lower ratings decreases the likelihood that your app will be featured or receive an editorial listing, both of which can massively increase exposure and downloads.
Justifying experiments to other team leads may be challenging, but it can also be necessary, even after an app is well established. After all, the more an app becomes successful, the more likely it is to gain competition. Later, we will discuss ways to run split tests that provide useful data without causing too much disruption.
- 計算機組成原理與接口技術(shù):基于MIPS架構(gòu)實驗教程(第2版)
- 數(shù)據(jù)挖掘原理與實踐
- 數(shù)據(jù)分析實戰(zhàn):基于EXCEL和SPSS系列工具的實踐
- 從零開始學(xué)Hadoop大數(shù)據(jù)分析(視頻教學(xué)版)
- 文本挖掘:基于R語言的整潔工具
- 數(shù)據(jù)化網(wǎng)站運營深度剖析
- Python數(shù)據(jù)分析:基于Plotly的動態(tài)可視化繪圖
- 大數(shù)據(jù):從概念到運營
- 深度剖析Hadoop HDFS
- 大話Oracle Grid:云時代的RAC
- 數(shù)據(jù)庫原理與設(shè)計(第2版)
- Oracle PL/SQL實例精解(原書第5版)
- 大數(shù)據(jù)架構(gòu)商業(yè)之路:從業(yè)務(wù)需求到技術(shù)方案
- 大數(shù)據(jù)精準(zhǔn)挖掘
- SAS金融數(shù)據(jù)挖掘與建模:系統(tǒng)方法與案例解析