Data Analyst
数据分析师
Reconstructed the membership value tiering using LTV and RFM models, introducing tiered subscription cycles ("3/30/90 days") that converted single-purchase users to subscribers and generated ¥35.6k+ monthly revenue (13% of daily total). Led review of female user matching privileges, detected 33% drop in pay rate from capping free matches, and rolled back strategy to save high-value users. Blocked inefficient redirection features by estimating ¥2,500 daily revenue loss. Optimized "location card" visibility based on funnel analysis, lifting pay rate from 1.2% to 2% and boosting weekly daily revenue by 100%+.
商业化会员增长:通过 RFM 和 LTV 模型进行用户价值分层,设计并落地“3日/30日/90日”分层会员体系,单月贡献营收超 35.6 万元(占日均总营收 13%)。策略风控与 A/B 测试:主导“女性用户匹配权益”A/B测试复盘,漏斗分析定位免费次数限制导致付费率环比下跌 33% 风险并实施策略回滚;测算流量分发变现效率,规避日均 ¥2,500 收入折损。精细化权益运营:对比不同 SKU 转化漏斗,优化“位置卡”在匹配页的曝光,使付费率从 1.2% 提升至 2%,带动该功能周均日流水环比增长超 100%。