Empowering Agriculture: Exploring User Sentiments and Suggestions for Plantix, a Smart Farming Application

J. j
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Abstract

Farming activities are transforming from traditional skill-based agriculture into knowledge-based and technology-driven digital agriculture. The use of intelligent information and communication technology introduces the idea of smart farming that enables farmers to collect weather data, monitor crop growth remotely and detect crop diseases easily. The introduction of Plantix, a pest and disease management tool in the form of a mobile application has allowed farmers to identify pests and diseases of the crop using their mobile devices. Hence, this study collected the reviews of Plantix to explore the response of the users on the Google Play Store towards the application through Latent Dirichlet Allocation (LDA) topic modeling. Results indicate four latent topics in the reviews: two positive evaluations (compliments, appreciation) and two suggestions (plant options, recommendations). We found the users suggested the application to additional plant options and additional features that might help the farmers with their difficulties. In addition, the application is expected to benefit the farmer more by having an early alert of diseases to farmers and providing various substitutes and a list of components for the remedial measures.
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增强农业权能:探索用户对智能农业应用程序 Plantix 的看法和建议
农业活动正在从传统的技能型农业转变为知识型和技术驱动型数字农业。智能信息和通信技术的使用引入了智能农业的理念,使农民能够收集气象数据、远程监测作物生长情况并轻松检测作物病害。Plantix 是一款移动应用形式的病虫害管理工具,它的推出使农民能够利用移动设备识别作物的病虫害。因此,本研究收集了 Plantix 的评论,通过 Latent Dirichlet Allocation (LDA) 主题建模,探索用户在 Google Play 商店对该应用程序的反应。结果显示评论中有四个潜在主题:两个积极评价(赞美、赞赏)和两个建议(植物选项、推荐)。我们发现,用户建议应用程序增加植物选项和其他功能,以帮助农民解决困难。此外,我们还希望该应用程序能为农民带来更多益处,如向农民发出病害预警,提供各种替代品和补救措施的成分列表。
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