Uncovering service gaps and patterns in smallholder dairy production systems: A data mining approach

IF 2.7 Q2 MULTIDISCIPLINARY SCIENCES
Devotha G. Nyambo
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引用次数: 0

Abstract

Traditional clustering algorithms have often been used to categorize farmers but tend to overlook the underlying reasons for these groupings. Typically, clusters are formed based on common metrics such as dispersal and centrality, which provide limited insights into the relationships among key attributes. This study introduces an innovative approach using pattern and association rules analysis to better understand the characteristics of dairy production clusters. Focusing on Tanzanian smallholder farmers, the research moves beyond identifying clusters to uncovering the hidden relationships within them. Through pattern analysis, the study logically examines the behavioral mechanisms that define these clusters, highlighting service gaps that, if addressed, could enhance smallholder dairy farmers' productivity. Frequent patterns with support ranging from 57 % to 93 % and confidence levels between 85 % and 100 % were identified, revealing critical challenges faced by these farmers. For instance, farmers using Artificial Insemination—typically younger or new entrants—face constraints related to farm size, land holdings, fodder production, lack of farmer groups, and insufficient formal training in dairy care. Meanwhile, seasoned farmers deal more with institutional barriers such as limited access to marketplaces, extension services, and distant water sources. The study highlights the diverse challenges faced by different farmer groups and provides strategic recommendations for improving dairy productivity. Enhancing access to formal training, improving fodder production, supporting the formation of farmer groups, and addressing institutional barriers are key actions that could help Tanzanian smallholder dairy farmers increase milk yield and overall productivity.

发现小农奶牛生产系统中的服务差距和模式:数据挖掘方法
传统的聚类算法通常用于对农民进行分类,但往往会忽略这些分组的根本原因。通常情况下,聚类是根据分散性和中心性等常见指标形成的,而这些指标对关键属性之间的关系提供的洞察力有限。本研究引入了一种创新方法,利用模式和关联规则分析来更好地了解乳制品生产集群的特征。该研究以坦桑尼亚小农为重点,不仅要识别集群,还要揭示集群中隐藏的关系。通过模式分析,该研究顺理成章地考察了界定这些集群的行为机制,突出了服务差距,如果加以解决,可以提高小农奶农的生产率。研究确定了支持率在 57 % 到 93 % 之间、置信度在 85 % 到 100 % 之间的常见模式,揭示了这些奶农面临的关键挑战。例如,使用人工授精的牧场主--通常是年轻牧场主或新加入的牧场主--面临着与牧场规模、土地保有量、饲料生产、缺乏牧场主团体以及奶牛护理方面的正规培训不足有关的制约因素。与此同时,经验丰富的牧场主则面临更多的制度性障碍,如进入市场的机会有限、推广服务和水源遥远等。该研究强调了不同农民群体面临的各种挑战,并提出了提高奶业生产率的战略建议。增加获得正规培训的机会、提高饲料产量、支持农民团体的形成以及解决制度性障碍是帮助坦桑尼亚小农奶农提高牛奶产量和整体生产率的关键行动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Scientific African
Scientific African Multidisciplinary-Multidisciplinary
CiteScore
5.60
自引率
3.40%
发文量
332
审稿时长
10 weeks
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