AI-based Market Intelligence Systems for Farmer Collectives: A Case Study from India

Ronak Ladhar, Sourav Sharma, Srikant Tangirala, Nishant Gupta, Abdul Azeem, Arjav Jain, Bhuvan Chand Katakam, Bommakanti Aditya, C. Sankaraiah, Hari Prasad Piridi, Kaushalendra Yadav, Kumra Vittalrao, Matiur Rahman, Rashul Chutani, Rishi Shah, Rohan S. Katepallewar, D. Chakraborty, Aaditeshwar Seth
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Abstract

Small and marginal farmers are unable to get a good price for their produce, because they face several challenges in market participation. Aggregation of produce via farmer cooperatives and the ability to delay sales (for non-perishable crops) to when market prices are high has emerged as a useful strategy to improve farmer incomes. We work with a network of farmer cooperatives in India growing soyabean and explore the potential of developing a machine learning–based price forecasting and sales recommendation system that produces suggestions on the best dates when harvested soyabean crops should be sold, e.g., whether to sell right away (if prices are likely to fall in the future) or to wait (if prices are likely to rise). We present an evaluation of different methods for price forecasting and a prospect theory–based method to produce sales recommendations. Experiments on historical data indicate that we can provide modest gains to farmers, and we build and field test an Android application for this purpose. Early results indicate positive feedback. Our methods can be generalized to other agricultural commodities that can be stored for several months and help farmer cooperatives to compete effectively in agricultural markets.
基于人工智能的农民集体市场情报系统:以印度为例
小农和边缘农民无法为他们的产品卖个好价钱,因为他们在市场参与方面面临着一些挑战。通过农民合作社将农产品集中起来,并有能力将(不易腐烂的作物)销售推迟到市场价格较高的时候,这已成为提高农民收入的一项有用策略。我们与印度种植大豆的农民合作社网络合作,探索开发基于机器学习的价格预测和销售推荐系统的潜力,该系统可以对收获的大豆作物的最佳销售日期提出建议,例如,是立即出售(如果价格可能会下跌)还是等待(如果价格可能会上涨)。我们提出了不同的价格预测方法的评估和基于前景理论的方法来产生销售建议。对历史数据的实验表明,我们可以为农民提供适度的收益,为此我们构建并现场测试了一个Android应用程序。早期的结果显示出积极的反馈。我们的方法可以推广到其他可以储存数月的农产品,并帮助农民合作社在农业市场上有效竞争。
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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