Regression-Based AGRO Forecasting
Model
B. V. Balaji Prabhu and M. Dakshayini
Abstract Prediction plays an important role everywhere particularly in business,
technology, and many others. It helps all types of organizations to improve profits
and reduce the loss by taking timely decisions. Agriculture is also like an organization
where farmers suffer with the loss most of the time in this business. This could be
mainly because, there is no system to ensure the synchronization between the demand
and supply for various food commodities required by the society. Science, enormous
amount of data from different authorized sources like government websites revealing
the demand and supply of various food commodities for forgoing period, this paper
proposes a novel regression based AGRO forecasting model. This could help the
farmers to make timely decisions and work towards fulfilling the actual needs of the
society and avoiding putting themselves into the loss by growing unnecessary crops.
Proposed model has been implemented using MapReduce parallel programming
approach with Hadoop Distributed File System. This processes time series data with
Regression model for predicting the demand, supply and price for the agricultural
commodities in distributed environment. Resulting forecasted values are in the range
of real values.
Keywords Prediction · Decision · Agriculture · Demand–supply · Forecast
Parallel programming model · Hadoop distributed file system · Regression
MapReduce · Time series
B. V. Balaji Prabhu (B ) · M. Dakshayini
Department of ISE, BMS College of Engineering, Bangalore 560019, Karnataka, India
e-mail: balajitiptur@gmail.com
M. Dakshayini
e-mail: dakshayini.ise@bmsce.ac.in
© Springer Nature Singapore Pte Ltd. 2019
A. Abraham et al. (eds.), Emerging Technologies in Data Mining and Information
Security, Advances in Intelligent Systems and Computing 755,
https://doi.org/10.1007/978-981-13-1951-8_43
479