参与补偿虫害损失的共同基金:通过机器学习分析农民利益的关键预测因素

IF 1.5 4区 经济学 Q3 AGRICULTURAL ECONOMICS & POLICY International Food and Agribusiness Management Review Pub Date : 2023-03-27 DOI:10.22434/ifamr2022.0086
Lisa Höschle, S. Trestini, E. Giampietri
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引用次数: 0

摘要

在意大利Halyomorpha halys虫害加剧的背景下,本文首次调查了促使水果种植者参与共同基金(MF)补偿这种入侵昆虫造成的生产损失的关键因素。数据是在意大利威尼托地区收集的,那里有许多农民遭受了黑腹蚜的袭击,人们对开发创新风险管理工具的兴趣日益浓厚。本研究考察了行为因素(风险态度、风险感知)和人格因素(自我效能感、控制源)如何解释农民参与MF的意向,并对大量的主要控制数据(如农民的感知和特征、农场特征)进行了控制。该研究假设近似稀疏性,并应用最小绝对收缩和选择算子(LASSO),这是一种机器学习技术,代表了风险管理研究的原始方法。我们的实证分析表明,农民参与基金的意愿是由生产损失的感知风险、参与基金的收益和农场年龄之间的相互作用驱动的,而不是由农场的社会经济特征驱动的。研究结果为政策制定者和地方利益相关者提供了有价值的见解,以实施符合农民需求的共同基金。
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Participation in a mutual fund covering losses due to pest infestation: analyzing key predictors of farmers’ interest through machine learning
In the context of intensified Halyomorpha halys infestations in Italy, this paper provides a very first investigation of key factors that drive fruit growers’ intention to participate in a mutual fund (MF) compensating production losses due to this invasive insect. Data were collected in Veneto Region in Italy, where many farmers suffered H. halys attacks, and interest in the development of innovative risk management tools is growing. The study investigates how behavioral (risk attitude, risk perception) and personality factors (self-efficacy, locus of control) explain farmers’ intention to participate in the MF, additionally controlling for a large number of primary control data (e.g. farmers’ perceptions and characteristics, farm characteristics). The study assumes approximate sparsity and applies the least absolute shrinkage and selection operator (LASSO), a machine learning technique which represents an original approach for research on risk management. Our empirical analysis reveals that farmers’ intention to participate in the MF is driven by an interplay between the perceived risk of production loss, the benefits from participation in the fund, and the farm age, rather than by socio-economic characteristics of the farm. Results provide valuable insights for policymakers and local stakeholders to implement a mutual fund close to the farmers’ needs.
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来源期刊
CiteScore
2.90
自引率
0.00%
发文量
0
审稿时长
>12 weeks
期刊介绍: The IFAMR is an internationally recognized catalyst for discussion and inquiry on issues related to the global food and agribusiness system. The journal provides an intellectual meeting place for industry executives, managers, scholars and practitioners interested in the effective management of agribusiness firms and organizations. IFAMR publishes high quality, peer reviewed, scholarly articles on topics related to the practice of management in the food and agribusiness industry. The Journal provides managers, researchers and teachers a forum where they can publish and acquire research results, new ideas, applications of new knowledge, and discussions of issues important to the worldwide food and agribusiness system. The Review is published electronically on this website. The core values of the Review are as follows: excellent academic contributions; fast, thorough, and detailed peer reviews; building human capital through the development of good writing skills in scholars and students; broad international representation among authors, editors, and reviewers; a showcase for IFAMA’s unique industry-scholar relationship, and a facilitator of international debate, networking, and research in agribusiness. The Review welcomes scholarly articles on business, public policy, law and education pertaining to the global food system. Articles may be applied or theoretical, but must relevant to managers or management scholars studies, industry interviews, and book reviews are also welcome.
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