A Machine Learning Model to Predict Missing People Status

被引:0
|
作者
Delahoz-Dominguez, Enrique [1 ]
Mendoza-Brand, Silvana [1 ]
Fontalvo-Herrera, Tomas [2 ]
机构
[1] Tecnhol Univ Bolivar, Cartagena De Indias, Colombia
[2] Univ Cartagena, Cartagena De Indias, Colombia
来源
EDUCATION EXCELLENCE AND INNOVATION MANAGEMENT THROUGH VISION 2020 | 2019年
关键词
decision-making; missing people; recommender system; supervised learning;
D O I
暂无
中图分类号
G40 [教育学];
学科分类号
040101 ; 120403 ;
摘要
The global problem of the disappearance of people involves many factors, including security, management of public resources and the emotional aspect related to the loss of a loved one. This paper introduces a model that predicts and classifies the status of missing persons, using 20 variables relating to the personal and geographical information of the event. Data was taken from the annual report on disappeared people, published by the Technical Investigation Body of the National Prosecutor's Office of Colombia in 2017, which included 6202 cases. We first reviewed scientific literature associated with machine learning models used to model social phenomena, identifying the most frequently used techniques in these studies. Secondly, the database was debugged in order to proceed with a relational analysis of the variables. Thirdly, three models of supervised data learning were implemented, including decision trees, k-nearest neighbours and random forest. The results show that the random forest model performs consistently better than the other models over the cross-validation and testing stages.
引用
收藏
页码:1160 / 1166
页数:7
相关论文
共 50 条
  • [41] Selection of Best Machine Learning Model to Predict Delay in Passenger Airlines
    Kothari, Ravi
    Kakkar, Riya
    Agrawal, Smita
    Oza, Parita
    Tanwar, Sudeep
    Jayaswal, Bharat
    Sharma, Ravi
    Sharma, Gulshan
    Bokoro, Pitshou N. N.
    IEEE ACCESS, 2023, 11 : 79673 - 79683
  • [42] Development and Temporal Validation of a Machine Learning Model to Predict Clinical Deterioration
    Foote, Henry P.
    Shaikh, Zohaib
    Witt, Daniel
    Shen, Tong
    Ratliff, William
    Shi, Harvey
    Gao, Michael
    Nichols, Marshall
    Sendak, Mark
    Balu, Suresh
    Osborne, Karen
    Kumar, Karan R.
    Jackson, Kimberly
    McCrary, Andrew W.
    Li, Jennifer S.
    HOSPITAL PEDIATRICS, 2024, 14 (01) : 11 - 20
  • [43] Using Machine Learning to Predict the Duration of AtrialFibrillation:Model Development and Validation
    Shimoo, Satoshi
    Senoo, Keitaro
    Okawa, Taku
    Kawai, Kohei
    Makino, Masahiro
    Munakata, Jun
    Tomura, Nobunari
    Iwakoshi, Hibiki
    Nishimura, Tetsuro
    Shiraishi, Hirokazu
    Inoue, Keiji
    Matoba, Satoaki
    JMIR MEDICAL INFORMATICS, 2024, 12
  • [44] A machine learning model to predict yield surfaces from crystal simulations
    Nascimento, Anderson
    Roongta, Sharan
    Diehl, Martin
    Beyerlein, Irene J.
    INTERNATIONAL JOURNAL OF PLASTICITY, 2023, 161
  • [45] MACHINE LEARNING MODEL TO PREDICT LIKELIHOOD OF SPONTANEOUS URETERAL STONE PASSAGE
    Fischer, Katherine
    Singh, Abhay
    Logan, Joey
    Schurhamer, Benjamin
    Cao, Brent
    Daniel, Roby
    McGregor, Ryan
    Nadeem, Iqra
    Uppaluri, Curran
    Xiang, Alice
    Choi, Ester
    Li, Yuemeng
    Fan, Yong
    Ziemba, Justin
    Tasian, Gregory
    JOURNAL OF UROLOGY, 2023, 209 : E201 - E201
  • [46] Machine Learning-Based Model Can Predict Stroke Outcome
    Heo, JoonNyung
    Yoon, Jihoon
    Park, Hyung Jong
    Kim, Young Dae
    Nam, Hyo Suk
    Heo, Ji Hoe
    STROKE, 2018, 49
  • [47] Gradient boosting machine learning model to predict aflatoxins in Iowa corn
    Branstad-Spates, Emily H.
    Castano-Duque, Lina
    Mosher, Gretchen A.
    Hurburgh Jr, Charles R.
    Owens, Phillip
    Winzeler, Edwin
    Rajasekaran, Kanniah
    Bowers, Erin L.
    FRONTIERS IN MICROBIOLOGY, 2023, 14
  • [48] The cascade integration model based on machine learning to predict gestational diabetes
    Ma, Jinlong
    Shi, Xiaoyue
    Xu, Liwei
    Wang, Shengpu
    Zheng, Rui
    Du, Lijia
    Yang, Zhifeng
    ENGINEERING RESEARCH EXPRESS, 2024, 6 (04):
  • [49] A machine learning model to predict the origin of forensically relevant body fluids
    Iacob, Diana
    Fuerst, Angelika
    Hadrys, Thorsten
    FORENSIC SCIENCE INTERNATIONAL GENETICS SUPPLEMENT SERIES, 2019, 7 (01) : 392 - 394
  • [50] A machine learning model to predict the pyrolytic kinetics of different types of feedstocks
    Wang, Shule
    Shi, Ziyi
    Jin, Yanghao
    Zaini, Ilman Nuran
    Li, Yan
    Tang, Chuchu
    Mu, Wangzhong
    Wen, Yuming
    Jiang, Jianchun
    Jonsson, Par Goran
    ENERGY CONVERSION AND MANAGEMENT, 2022, 260