W.A. Franke College of Forestry and Conservation, University of Montana, 440 CHCB, 32 Campus Drive, Missoula, MT, 59812, U.S.A.
Chesapeake Conservancy, 716 Giddings Avenue, Annapolis, MD, 21403, U.S.A.
Conserv Biol. 2019 Oct;33(5):1141-1150. doi: 10.1111/cobi.13315. Epub 2019 Apr 16.
Widespread human action and behavior change is needed to achieve many conservation goals. Doing so at the requisite scale and pace will require the efficient delivery of outreach campaigns. Conservation gains will be greatest when efforts are directed toward places of high conservation value (or need) and tailored to critical actors. Recent strategic conservation planning has relied primarily on spatial assessments of biophysical attributes, largely ignoring the human dimensions. Elsewhere, marketers, political campaigns, and others use microtargeting-predictive analytics of big data-to identify people most likely to respond positively to particular messages or interventions. Conservationists have not yet widely capitalized on these techniques. To investigate the effectiveness of microtargeting to improve conservation, we developed a propensity model to predict restoration behavior among 203,645 private landowners in a 5,200,000 ha study area in the Chesapeake Bay Watershed (U.S.A.). To isolate the additional value microtargeting may offer beyond geospatial prioritization, we analyzed a new high-resolution land-cover data set and cadastral data to identify private owners of riparian areas needing restoration. Subsequently, we developed and evaluated a restoration propensity model based on a database of landowners who had conducted restoration in the past and those who had not (n = 4978). Model validation in a parallel database (n = 4989) showed owners with the highest scorers for propensity to conduct restoration (i.e., top decile) were over twice as likely as average landowners to have conducted restoration (135%). These results demonstrate that microtargeting techniques can dramatically increase the efficiency and efficacy of conservation programs, above and beyond the advances offered by biophysical prioritizations alone, as well as facilitate more robust research of many social-ecological systems.
实现许多保护目标需要广泛的人类行动和行为改变。要在必要的规模和速度上做到这一点,需要有效地开展宣传活动。当努力针对具有高保护价值(或需求)的地方,并针对关键行为者进行调整时,保护收益将最大。最近的战略保护规划主要依赖于对生物物理属性的空间评估,在很大程度上忽略了人类层面。在其他地方,营销人员、政治运动家和其他人使用微观定位——大数据的预测分析——来识别最有可能对特定信息或干预措施做出积极反应的人。保护主义者尚未广泛利用这些技术。为了研究微观定位提高保护效果的有效性,我们开发了一个倾向模型,以预测切萨皮克湾流域(美国)520 万公顷研究区的 203645 名私人土地所有者的恢复行为。为了隔离微观定位除了地理空间优先排序之外可能提供的额外价值,我们分析了一个新的高分辨率土地覆盖数据集和地籍数据,以确定需要恢复的河岸地区的私人所有者。随后,我们基于过去进行过恢复的土地所有者和未进行过恢复的土地所有者的数据库(n=4978)开发并评估了恢复倾向模型。在平行数据库(n=4989)中的模型验证表明,具有最高恢复倾向得分(即最高十分位数)的所有者进行恢复的可能性是普通所有者的两倍多(135%)。这些结果表明,微观定位技术可以大大提高保护计划的效率和效果,超出了仅通过生物物理优先排序提供的优势,同时还可以促进对许多社会生态系统的更有力研究。