From Text to Trends: A Unique Garden Analytics Perspective on the Future of Modern Agriculture
Parag Saxena

TL;DR
This paper presents a machine learning framework that analyzes textual gardening questions to predict future horticultural trends, aiding targeted education and strategic planning in modern agriculture.
Contribution
It introduces a novel NLP and time series analysis approach to predict horticultural trends from online gardening queries, integrating location data for tailored insights.
Findings
Machine learning models effectively categorize gardening questions.
Temporal analysis predicts future question trends.
Location data enhances trend accuracy.
Abstract
Data-driven insights are essential for modern agriculture. This research paper introduces a machine learning framework designed to improve how we educate and reach out to people in the field of horticulture. The framework relies on data from the Horticulture Online Help Desk (HOHD), which is like a big collection of questions from people who love gardening and are part of the Extension Master Gardener Program (EMGP). This framework has two main parts. First, it uses special computer programs (machine learning models) to sort questions into categories. This helps us quickly send each question to the right expert, so we can answer it faster. Second, it looks at when questions are asked and uses that information to guess how many questions we might get in the future and what they will be about. This helps us plan on topics that will be really important. It's like knowing what questions…
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Taxonomy
TopicsSmart Agriculture and AI
