Using Machine Learning to Identify At-risk Students in an Introductory Programming Course at a Two-year Public College

被引:0
|
作者
Cooper, Cameron [1 ]
机构
[1] San Juan Coll, Comp Sci, Farmington, NM 87402 USA
关键词
Computer science; Early alert; Early alert triggers; Machine learning; Student success; Neural networks; Gateway course; PROBABILISTIC NEURAL-NETWORKS; SYSTEM;
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Nationally, more than one-third of the students who enroll in an introductory computer science programming course (CS1) do not succeed. To improve student success rates, supervised machine learning is used to identify students who are "at risk" of not succeeding in CS1 at a two-year public college. The resultant predictive model accurately identifies approximate to 99% of at-risk students in an out-of-sample test dataset. The course instructor piloted the use of the model's predictive factors as early alert triggers to intervene with individualized outreach and support across three course sections of CS1 in fall 2020. The outcome of this pilot study was a 23% increase in student success and a 7.3% decrease in the DFW rate (i.e. the percentage of students who receive a D, receive an F, or withdraw). More importantly, this study identified academic-based early alert triggers for CS1. The first two graded programs are of paramount importance for student success in this course.
引用
收藏
页码:407 / 421
页数:15
相关论文
共 50 条
  • [31] Using machine learning to identify predictors of imminent drinking and create tailored messages for at-risk drinkers experiencing homelessness
    Walters, Scott T.
    Businelle, Michael S.
    Suchting, Robert
    Li, Xiaoyin
    Hebert, Emily T.
    Mun, Eun-Young
    JOURNAL OF SUBSTANCE ABUSE TREATMENT, 2021, 127
  • [32] An Investigation of Students' Learning Achievement and Perception using Flipped Classroom in an Introductory Programming course: A Case Study of Thailand Higher Education
    Pattanaphanchai, Jarutas
    JOURNAL OF UNIVERSITY TEACHING AND LEARNING PRACTICE, 2019, 16 (05):
  • [33] Increasing STEM Transfer Readiness Among Underrepresented Minoritized Two-Year College Students: Examining Course-Taking Patterns, Experiences, and Interventions
    Sansing-Helton, Bethany
    Coover, Gail
    Benton, Charles E., Jr.
    FRONTIERS IN EDUCATION, 2021, 6
  • [34] Predicting at-risk university students based on their e-book reading behaviours by using machine learning classifiers
    Chen, Cheng-Huan
    Yang, Stephen J. H.
    Weng, Jian-Xuan
    Ogata, Hiroaki
    Su, Chien-Yuan
    AUSTRALASIAN JOURNAL OF EDUCATIONAL TECHNOLOGY, 2021, 37 (04) : 130 - 144
  • [35] TWO-YEAR PROGNOSIS ESTIMATION OF ADVANCED HIGH GRADE SEROUS OVARIAN CANCER PATIENTS USING MACHINE LEARNING
    Laios, Alexandros
    Katsenou, Angeliki
    Tan, Yong
    Otify, Mohamed
    Kaufmann, Angelika
    Thangavelu, Amudha
    Nugent, David
    Dejong, Diederick
    INTERNATIONAL JOURNAL OF GYNECOLOGICAL CANCER, 2020, 30 : A67 - A68
  • [36] Detecting risk of suicide attempts among Chinese medical college students using a machine learning algorithm
    Shen, Yanmei
    Zhang, Wenyu
    Chan, Bella Siu Man
    Zhang, Yaru
    Meng, Fanchao
    Kennon, Elizabeth A.
    Wu, Hanjing Emily
    Luo, Xuerong
    Zhang, Xiangyang
    JOURNAL OF AFFECTIVE DISORDERS, 2020, 273 : 18 - 23
  • [37] Longitudinal Effect of a Volunteer Tutoring Program on Reading Skills of Students Identified as At-Risk for Reading Failure: A Two-Year Follow-Up Study
    Burns, Matthew K.
    Senesac, Barbara J.
    Silberglitt, Benjamin
    LITERACY RESEARCH AND INSTRUCTION, 2008, 47 (01) : 27 - 37
  • [38] Using machine learning methods to identify significant variables for the prediction of first-year Informatics Engineering students dropout
    Bello, Felipe A.
    Kohler, Jacqueline
    Hinrechsen, Karen
    Araya, Victor
    Hidalgo, Luciano
    Luis Jara, Jose
    2020 39TH INTERNATIONAL CONFERENCE OF THE CHILEAN COMPUTER SCIENCE SOCIETY (SCCC), 2020,
  • [39] Two-year death prediction models among patients with Chagas Disease using machine learning-based methods
    Ferreira, Ariela Mota
    Santos, Laercio Ives
    Sabino, Ester Cerdeira
    Ribeiro, Antonio Luiz Pinho Y.
    de Oliveira-da Silva, Lea Campos
    Damasceno, Renata Fiuza Y.
    D'Angelo, Marcos Flavio Silveira Vasconcelos
    Nunes, Maria do Carmo Pereira Y.
    Haikal, Desiree Sant'Ana
    PLOS NEGLECTED TROPICAL DISEASES, 2022, 16 (04):
  • [40] Active learning reduces academic risk of students with nonformal reasoning skills: Evidence from an introductory physics massive course in a Chilean public university
    Lagubeau, Guillaume
    Tecpan, Silvia
    Hernandez, Carla
    PHYSICAL REVIEW PHYSICS EDUCATION RESEARCH, 2020, 16 (02):