System of recommendations for the evaluation of the good living of migrant children belonging to foreign families in the city of Riobamba

Main Article Content

Janneth Ximena Iglesias Quintana
Gabriela Fernanda Fajardo Pincay
Evelyn Yajaira Sagba Sagba

Abstract

Good living could be defined as a constitutional principle, which seeks to satisfy the needs of people. Migration is a global phenomenon that refers to the movement of people from one place to another in search of better living conditions. The present research aims to develop a system of recommendations for the evaluation of the good living of migrant children who belong to foreign families in the city of Riobamba. The recommendation system was implemented to identify the levels of vulnerability that Venezuelan children have in the city of Riobamba, in terms of their fundamental rights. The results show that migration brings exploitation; this becomes begging and as a consequence, children and adolescents in a state of begging are affected in the social sphere, since the states of Ecuador and Venezuela do not create policies or protection plans to stop this phenomenon. This situation influences the personality of minors to be unstable, dependent and to have antisocial behaviors. A survey was conducted among the citizens of Riobamba with the aim of understanding what the opinion of the citizens is regarding this problem. The State should pay more attention to this problem and ensure that the rights of migrant minors are respected.


 

Downloads

Download data is not yet available.

Article Details

How to Cite
System of recommendations for the evaluation of the good living of migrant children belonging to foreign families in the city of Riobamba. (2024). Neutrosophic Computing and Machine Learning. ISSN 2574-1101, 33, 98-106. https://fs.unm.edu/NCML2/index.php/112/article/view/553
Section
Articles

How to Cite

System of recommendations for the evaluation of the good living of migrant children belonging to foreign families in the city of Riobamba. (2024). Neutrosophic Computing and Machine Learning. ISSN 2574-1101, 33, 98-106. https://fs.unm.edu/NCML2/index.php/112/article/view/553