Close Menu
    Facebook X (Twitter) Instagram
    SciTechDaily
    • Biology
    • Chemistry
    • Earth
    • Health
    • Physics
    • Science
    • Space
    • Technology
    Facebook X (Twitter) Pinterest YouTube RSS
    SciTechDaily
    Home»Science»Predicting Hidden Intentions: Algorithm Predicts Which Students Will Drop Out of Math Courses
    Science

    Predicting Hidden Intentions: Algorithm Predicts Which Students Will Drop Out of Math Courses

    By University of TübingenMay 23, 20222 Comments4 Mins Read
    Facebook Twitter Pinterest Telegram LinkedIn WhatsApp Email Reddit
    Share
    Facebook Twitter LinkedIn Pinterest Telegram Email Reddit
    Algorithm Formulas Math Concept
    Researchers have created an algorithm that can predict on average eight weeks in advance whether students will terminate their studies.

    Social science researchers at the University of Tübingen develops a statistical method for separating different levels of influence.

    In the subjects of science and technology, engineering, and mathematics – known collectively as STEM subjects – up to 40 percent of college students drop out of their studies in the entry phase. A research team from the University of Tübingen’s Methods Center at the Faculty of Economics and Social Sciences has now developed a statistical method that can be used to forecast on average eight weeks in advance whether students will terminate their studies.

    The new algorithm also represents a general methodological step forward. While making the prediction, the algorithm is able to consider the differences between individual students that already exist at the beginning of the study – such as overall cognitive abilities – and separate these from the time-dependent affective states of individual students. In this way, it becomes possible to predict the probability of dropout even for students who are well-suited for their course. This separation of different levels of influence could also be useful for many questions from other fields. The researchers have published their study in the journal Psychometrika.

    Students in STEM subjects have different preconditions at the outset, which influence the general probability of dropping out. “It is obvious, for example, that mathematics performance in high school and general cognitive ability vary among individual students. Lower performance is initially more likely to lead to dropout in the entry phase,” says Professor Augustin Kelava of the Methods Center. “However, we wanted to approach the question of how, among comparably able new students, to identify those who drop out quickly.”

    Longitudinal Study With 122 Students

    In an initial survey for the study, 122 students at the University of Tübingen in their first semester of mathematics were asked about their prior knowledge of mathematics, their interests, their school career, and their financial background; and details of personality variables, including emotional stability, were collected. “The results of the initial assessment gave us a picture of each student’s stable characteristics,” Kelava says. This was followed by five-minute surveys three times a week, for a total of 50 times over 131 days of the semester, in which students indicated how they were currently feeling and whether they felt they were keeping up in class. “Because we checked back with the students, we were able to verify our results. We knew who had stayed until the end of the semester, as well as the grade of the final exam. We also found that our survey met with a high level of acceptance,” he says.

    The research team did not specifically intervene in individual study trajectories. “That is a potential application for the future development of this process,” he says. The predictions were calculated using the newly developed statistical method, an algorithm that uses data collected up to a point in time to determine a student’s future behavior and experience with high probability. It’s called a forward-filtering-backward-sampling (FFBS) algorithm. “The levels of influence are complex. They interact, and a multitude of variables play a role in the decision to persist or drop out,” says Kelava.

    Early Prediction of Intent To Drop Out

    As a result, the research team was able to predict dropout intentions on average as early as eight weeks beforehand, at a time when people are still coming to classes. “Often, after starting in the winter semester, students are no longer there after the Christmas break,” Kelava says. “In predicting hidden intentions, we’ve been able to separate the two levels of influence – on the one hand, the students’ stable characteristics, from the affective state changes over time on the other hand. Based on their own disclosures of how they feel and how they’re doing, we can tell when they develop a latent, not yet directly observable, intention to drop out.”

    This statistical method provides an instrument enabling specific approaches to individual students who are in principle qualified for the subject but who are showing tendencies to drop out, Kelava adds. They could be offered coaching or counseling. In general, he says the method is also suitable for certain research questions in other areas, such as the separation of stable influencing variables from situational developments, for example in stock prices or in engineering applications.

    Reference: “Forecasting Intra-individual Changes of Affective States Taking into Account Inter-individual Differences Using Intensive Longitudinal Data from a University Student Dropout Study in Math” by Augustin Kelava, Pascal Kilian, Judith Glaesser, Samuel Merk and Holger Brandt, 2 April 2022, Psychometrika.
    DOI: 10.1007/s11336-022-09858-6

    Never miss a breakthrough: Join the SciTechDaily newsletter.
    Follow us on Google and Google News.

    Algorithm Behavioral Science Education Mathematics
    Share. Facebook Twitter Pinterest LinkedIn Email Reddit

    Related Articles

    Similar Thinking Patterns Shown in Native Amazonians, Americans and Monkeys

    Optimizing Complex Decision-Making at MIT

    Bringing Order to Chaos: Mathematicians Develop New Theory to Explain Real-World Randomness

    Coordinated Behavior: Birds of a Feather Flock Together, but How Do They Decide Where to Go?

    Study Finds Relationship Between Racial Academic Achievement Gaps and Discipline Disparities in US

    Algorithm Uses Math to Blend Musical Notes Seamlessly [Video]

    Babies Begin Learning Language in Womb

    Kinder Children Are Happier & More Popular Than Bullies

    The Algorithmic Approach to the Mathematics of Cramming

    2 Comments

    1. Ryan Harvey on June 20, 2022 3:58 am

      I’m sure this algorithm can predict outcomes other than this one.

      Reply
    2. M. Balasundar on May 6, 2025 6:42 am

      The probability theory becomes more exact science, if number of trails or samples increase.
      For example, taking Humanity as a whole ,there are 50 percent of men and 50 percent of women

      Reply
    Leave A Reply Cancel Reply

    • Facebook
    • Twitter
    • Pinterest
    • YouTube

    Don't Miss a Discovery

    Subscribe for the Latest in Science & Tech!

    Trending News

    Scientists May Have Discovered How To Heal Damaged Kidneys

    Interstellar Visitor 3I/ATLAS Is Bursting With an Unexpected Chemical

    Scientists Just Found All 5 Genetic “Letters” of DNA and RNA on an Asteroid

    The 4,000-Year-Old City That Defied History’s Rules on Wealth and Power

    The World’s Biggest Population Fear Has Flipped – and It Could Change Everything

    This “Fake” Pill Improved Memory and Physical Performance in Just 3 Weeks

    Scientists Say Frequent Ejaculation May Improve Sperm Quality and Fertility

    Scientists Have Found “The Heaven Sword” After Years of Looking

    Follow SciTechDaily
    • Facebook
    • Twitter
    • YouTube
    • Pinterest
    • Newsletter
    • RSS
    SciTech News
    • Biology News
    • Chemistry News
    • Earth News
    • Health News
    • Physics News
    • Science News
    • Space News
    • Technology News
    Recent Posts
    • Scientists Uncover a Previously Unknown Lineage of Ancient Marsupials
    • Critically Endangered Monkey Defies the Odds With New Baby After Surgery
    • 17-Million-Year-Old Ape Fossil in Egypt Could Change What We Know About Human Origins
    • NASA’s Orbiting Quantum Lab Pushes Deeper Into the Unknown
    • NASA’s James Webb Discovers Bizarre Salt Clouds on the Pink Planet
    Copyright © 1998 - 2026 SciTechDaily. All Rights Reserved.
    • Science News
    • About
    • Contact
    • Editorial Board
    • Privacy Policy
    • Terms of Use

    Type above and press Enter to search. Press Esc to cancel.