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计算机科学
产品(数学)
新产品开发
功能(生物学)
经济
市场份额
多元化(营销策略)
市场细分
算法
互补性商品
产业组织
营销
不平等
战略管理
人工智能
商业模式
数据流
定价策略
模块化设计
控制(管理)
服务(商务)
上市时间
数字生态系统
桥接(联网)
市场分析
补充资产
作者
Xiaowei Zhang,Siliang Tong,Xueming Luo,Zhijie Lin,Jing Li
摘要
Abstract Research Summary This study investigates how AI recommendation algorithms shape complementor strategies and market equality on digital platforms. Using two quasi‐natural experiments from a food‐sharing platform, we examine impacts of sequential algorithmic upgrades: from a location‐based baseline to popularity‐based (PopRec) and then personalization‐based (PersRec). Analyses of over 1.7 million observations reveal that PopRec drives complementors to concentrate on a few offerings, while PersRec encourages new product introduction; yet these strategic shifts come at the expense of one another. Furthermore, PopRec reduces revenues of superstars but boosts revenues for long‐tail complementors, enhancing market equality. Conversely, PersRec exacerbates market inequality by asymmetrically benefiting superstars. By bridging platform orchestration and AI frontiers, this study demonstrates the strategic potential of AI in platform management while underscoring the importance of algorithmic accountability. Managerial Summary Digital platforms increasingly deploy AI recommendation algorithms to manage ecosystem performance. This study reveals that these algorithms also function as effective orchestration mechanisms, incentivizing and shaping complementor offering strategies at scale. We find that popularity‐based algorithms incentivize complementors to specialize and concentrate on a few core product offerings, while personalization‐based algorithms foster broader new product introduction. Our results demonstrate the vital strategic value of AI for managing platform ecosystems. Crucially, both algorithms present inherent trade‐offs for complementor strategies and trigger unforeseen market dynamics. Platform owners must meticulously design and implement algorithmic systems, balancing ecosystem generativity with operational control and considering far‐reaching market inequality implications.
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