Using Machine Learning to Predict Poverty Status in Costa Rican Households

11/26/2021
by   Ji Yoon Kim, et al.
0

This study presents two supervised multiclassification machine learning models to predict the poverty status of Costa Rican households as a way to support government and business sectors make decisions in a rapidly changing social and economic environment. Using the Costa Rican household dataset collected via the proxy means test conducted by the Inter-American Development Bank, Random Forest and Gradient Boosted Trees achieved F1 scores of 64.9 68.4 impact on predicting poverty status.

READ FULL TEXT

page 1

page 12

research
01/19/2023

SpotHitPy: A Study For ML-Based Song Hit Prediction Using Spotify

In this study, we approached the Hit Song Prediction problem, which aims...
research
04/11/2020

Explaining the Relationship between Internet and Democracy in Partly Free Countries Using Machine Learning Models

Previous studies have offered a variety of explanations on the relations...
research
03/21/2021

Knowledge Discovery in Surveys using Machine Learning: A Case Study of Women in Entrepreneurship in UAE

Knowledge Discovery plays a very important role in analyzing data and ge...
research
07/07/2020

Predicting Afrobeats Hit Songs Using Spotify Data

This study approached the Hit Song Science problem with the aim of predi...
research
03/05/2016

Grading of Mammalian Cumulus Oocyte Complexes using Machine Learning for in Vitro Embryo Culture

Visual observation of Cumulus Oocyte Complexes provides only limited inf...
research
06/05/2023

Random Distribution Shift in Refugee Placement: Strategies for Building Robust Models

Algorithmic assignment of refugees and asylum seekers to locations withi...
research
02/11/2022

Predicting Fuel Consumption in Power Generation Plants using Machine Learning and Neural Networks

The instability of power generation from national grids has led industri...

Please sign up or login with your details

Forgot password? Click here to reset