Volunteer crowdsourcing platforms match volunteers with tasks which are often recurring. To ensure completion of such tasks, platforms frequently use a lever known as "adoption," which amounts to a commitment by the volunteer to repeatedly perform the task. Despite reducing match uncertainty, high levels of adoption can decrease the probability of forming new matches, which in turn can suppress growth. We study how platforms should manage this trade-off. Our research is motivated by a collaboration with Food Rescue U.S. (FRUS), a volunteer-based food recovery organization active in over 30 locations. For platforms such as FRUS, success crucially depends on volunteer engagement. Consequently, effectively utilizing non-monetary levers, such as adoption, is critical. Motivated by the volunteer management literature and our analysis of FRUS data, we develop a model for two-sided markets which repeatedly match volunteers with tasks. Our model incorporates match uncertainty as well as the negative impact of failing to match on future engagement. We study the platform's optimal policy for setting the adoption level to maximize the total discounted number of matches. We fully characterize the optimal myopic policy and show that it takes a simple form: depending on volunteer characteristics and market thickness, either allow for full adoption or disallow adoption. In the long run, we show that such a policy is either optimal or achieves a constant-factor approximation. Our finding is robust to incorporating heterogeneity in volunteer behavior. Our work sheds light on how two-sided platforms need to carefully control the double-edged impacts that commitment levers have on growth and engagement. A one-size-fits-all solution may not be effective, as the optimal design crucially depends on the characteristics of the volunteer population.
翻译:为确保完成这些任务,平台经常使用被称为“选择”的杠杆,这相当于志愿者反复履行这项任务的承诺。尽管减少了匹配的不确定性,但高采纳水平可以降低形成新匹配的可能性,而这反过来又会抑制增长。我们研究平台如何管理这一交易。我们的研究是由一个活跃在30多个地点的基于志愿者的食品回收组织FES(FRUS)合作推动的。对于像FRUS这样的平台来说,成功与否关键取决于志愿者的参与。因此,有效利用非货币杠杆(如采用)至关重要。在志愿者管理文献和我们对FRUS数据的分析的推动下,我们为双面市场开发了一种模式,这些模式又反复将志愿者与任务匹配。我们的模型包含了匹配不确定性以及无法匹配未来参与的负面影响。我们研究平台的最佳政策是确定采纳水平以最大限度地减少双倍的匹配数量。我们充分描述最佳的智能政策,并表明它采取简单的形式:取决于志愿者的特性和动态,要么允许他长期地融入市场,要么允许我们的最佳需求,要么是最终地运用。