Analyzing iShamba data for improving livestock advisories

This project seeks to comprehend historical messaging patterns and their correlation with climate hazard data from livestock farmers' current interactions with agriculture service provider platforms like iShamba. The goal is to develop a high-resolution, targeted, and timely advisory package for liv...

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Main Author: Bhamra, Saranjeet Kaur
Format: Informe técnico
Language:Inglés
Published: 2023
Subjects:
Online Access:https://hdl.handle.net/10568/135373
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author Bhamra, Saranjeet Kaur
author_browse Bhamra, Saranjeet Kaur
author_facet Bhamra, Saranjeet Kaur
author_sort Bhamra, Saranjeet Kaur
collection Repository of Agricultural Research Outputs (CGSpace)
description This project seeks to comprehend historical messaging patterns and their correlation with climate hazard data from livestock farmers' current interactions with agriculture service provider platforms like iShamba. The goal is to develop a high-resolution, targeted, and timely advisory package for livestock farmers through these platforms. The dataset comprises 319,569 records of text messages sent by farmers via the iShamba platform between 2015 and 2022. After data pre-processing, including filtering for livestock-specific messages and removing duplicate SMS messages, the final sample size is 72,062, with no missing data. Recognizing the impact of dry days (NDD) and heat stress livestock index (THI) on livestock productivity, the analysis employs the Structural Topic Model (STM) package in R. This tool explores the optimal number of topics for topic modeling, visualizes results, estimates relationships between metadata and topics, creates a Shiny application for STM results, and utilizes the Stupid Back-Off (SBO) package in R to build a predictive model for the next word(s). The results reveal that simplifying THI and NDD stress level classes did not yield expected outcomes, especially when compared to the more intricate model of NDD. The intricate model successfully identified stress-related words and SMSs. The findings emphasize that extreme weather conditions, such as prolonged absence of rain for over 25 days in a month, trigger farmer concerns about crop health and the impact of pesticides. While the simplified model approach could have been advantageous, results may have been influenced by the specific time period during data collection
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spelling CGSpace1353732025-11-05T12:30:45Z Analyzing iShamba data for improving livestock advisories Bhamra, Saranjeet Kaur climate change farmers climate change impacts This project seeks to comprehend historical messaging patterns and their correlation with climate hazard data from livestock farmers' current interactions with agriculture service provider platforms like iShamba. The goal is to develop a high-resolution, targeted, and timely advisory package for livestock farmers through these platforms. The dataset comprises 319,569 records of text messages sent by farmers via the iShamba platform between 2015 and 2022. After data pre-processing, including filtering for livestock-specific messages and removing duplicate SMS messages, the final sample size is 72,062, with no missing data. Recognizing the impact of dry days (NDD) and heat stress livestock index (THI) on livestock productivity, the analysis employs the Structural Topic Model (STM) package in R. This tool explores the optimal number of topics for topic modeling, visualizes results, estimates relationships between metadata and topics, creates a Shiny application for STM results, and utilizes the Stupid Back-Off (SBO) package in R to build a predictive model for the next word(s). The results reveal that simplifying THI and NDD stress level classes did not yield expected outcomes, especially when compared to the more intricate model of NDD. The intricate model successfully identified stress-related words and SMSs. The findings emphasize that extreme weather conditions, such as prolonged absence of rain for over 25 days in a month, trigger farmer concerns about crop health and the impact of pesticides. While the simplified model approach could have been advantageous, results may have been influenced by the specific time period during data collection 2023-12-06 2023-12-14T09:51:00Z 2023-12-14T09:51:00Z Report https://hdl.handle.net/10568/135373 en Limited Access application/pdf Bhamra, S.K. (2023) Analyzing iShamba data for improving livestock advisories. CGIAR Research Initiative on Livestock and Climate. 25 p.
spellingShingle climate change
farmers
climate change impacts
Bhamra, Saranjeet Kaur
Analyzing iShamba data for improving livestock advisories
title Analyzing iShamba data for improving livestock advisories
title_full Analyzing iShamba data for improving livestock advisories
title_fullStr Analyzing iShamba data for improving livestock advisories
title_full_unstemmed Analyzing iShamba data for improving livestock advisories
title_short Analyzing iShamba data for improving livestock advisories
title_sort analyzing ishamba data for improving livestock advisories
topic climate change
farmers
climate change impacts
url https://hdl.handle.net/10568/135373
work_keys_str_mv AT bhamrasaranjeetkaur analyzingishambadataforimprovinglivestockadvisories