Dynamic Diagnosis of the Progress and Shortcomings of Student Learning
using Machine Learning based on Cognitive, Social, and Emotional Features
- URL: http://arxiv.org/abs/2204.13989v1
- Date: Wed, 13 Apr 2022 21:14:58 GMT
- Title: Dynamic Diagnosis of the Progress and Shortcomings of Student Learning
using Machine Learning based on Cognitive, Social, and Emotional Features
- Authors: Alex Doboli, Simona Doboli, Ryan Duke, Sangjin Hong and Wendy Tang
- Abstract summary: Student diversity can be challenging as it adds variability in the way in which students learn and progress over time.
A single teaching approach is likely to be ineffective and result in students not meeting their potential.
This paper discusses a novel methodology based on data analytics and Machine Learning to measure and causally diagnose the progress and shortcomings of student learning.
- Score: 0.06999740786886534
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Student diversity, like academic background, learning styles, career and life
goals, ethnicity, age, social and emotional characteristics, course load and
work schedule, offers unique opportunities in education, like learning new
skills, peer mentoring and example setting. But student diversity can be
challenging too as it adds variability in the way in which students learn and
progress over time. A single teaching approach is likely to be ineffective and
result in students not meeting their potential. Automated support could address
limitations of traditional teaching by continuously assessing student learning
and implementing needed interventions. This paper discusses a novel methodology
based on data analytics and Machine Learning to measure and causally diagnose
the progress and shortcomings of student learning, and then utilizes the
insight gained on individuals to optimize learning. Diagnosis pertains to
dynamic diagnostic formative assessment, which aims to uncover the causes of
learning shortcomings. The methodology groups learning difficulties into four
categories: recall from memory, concept adjustment, concept modification, and
problem decomposition into sub-goals (sub-problems) and concept combination.
Data models are predicting the occurrence of each of the four challenge types,
as well as a student's learning trajectory. The models can be used to
automatically create real-time, student-specific interventions (e.g., learning
cues) to address less understood concepts. We envision that the system will
enable new adaptive pedagogical approaches to unleash student learning
potential through customization of the course material to the background,
abilities, situation, and progress of each student; and leveraging
diversity-related learning experiences.
Related papers
- Guiding Empowerment Model: Liberating Neurodiversity in Online Higher Education [2.703906279696349]
We address the equity gap for neurodivergent and situationally limited learners by identifying the spectrum of dynamic factors that impact learning and function.
We suggest that by applying the mode through technology-enabled features such as customizable task management, guided varied content access, and guided multi-modal collaboration, major learning barriers will be removed.
arXiv Detail & Related papers (2024-10-24T16:05:38Z) - Exploring Engagement and Perceived Learning Outcomes in an Immersive Flipped Learning Context [0.195804735329484]
The aim of this study was to explore the benefits and challenges of the immersive flipped learning approach in relation to students' online engagement and perceived learning outcomes.
The study revealed high levels of student engagement and perceived learning outcomes, although it also identified areas needing improvement.
The findings of this study can serve as a valuable resource for educators seeking to design engaging and effective remote learning experiences.
arXiv Detail & Related papers (2024-09-19T11:38:48Z) - Learning Style Identification Using Semi-Supervised Self-Taught Labeling [0.0]
Education must be adaptable to sudden changes and disruptions caused by events like pandemics, war, and natural disasters related to climate change.
While learning management systems support teachers' productivity and creativity, they typically provide the same content to all learners in a course.
We propose a semi-supervised machine learning approach that detects students' learning styles using a data mining technique.
arXiv Detail & Related papers (2024-02-04T11:56:49Z) - YODA: Teacher-Student Progressive Learning for Language Models [82.0172215948963]
This paper introduces YODA, a teacher-student progressive learning framework.
It emulates the teacher-student education process to improve the efficacy of model fine-tuning.
Experiments show that training LLaMA2 with data from YODA improves SFT with significant performance gain.
arXiv Detail & Related papers (2024-01-28T14:32:15Z) - Harnessing Transparent Learning Analytics for Individualized Support
through Auto-detection of Engagement in Face-to-Face Collaborative Learning [3.0184625301151833]
This paper proposes a transparent approach to automatically detect student's individual engagement in the process of collaboration.
The proposed approach can reflect student's individual engagement and can be used as an indicator to distinguish students with different collaborative learning challenges.
arXiv Detail & Related papers (2024-01-03T12:20:28Z) - Benchmarking Continual Learning from Cognitive Perspectives [14.867136605254975]
Continual learning addresses the problem of continuously acquiring and transferring knowledge without catastrophic forgetting of old concepts.
There is a mismatch between cognitive properties and evaluation methods of continual learning models.
We propose to integrate model cognitive capacities and evaluation metrics into a unified evaluation paradigm.
arXiv Detail & Related papers (2023-12-06T06:27:27Z) - Anti-Retroactive Interference for Lifelong Learning [65.50683752919089]
We design a paradigm for lifelong learning based on meta-learning and associative mechanism of the brain.
It tackles the problem from two aspects: extracting knowledge and memorizing knowledge.
It is theoretically analyzed that the proposed learning paradigm can make the models of different tasks converge to the same optimum.
arXiv Detail & Related papers (2022-08-27T09:27:36Z) - What Matters in Learning from Offline Human Demonstrations for Robot
Manipulation [64.43440450794495]
We conduct an extensive study of six offline learning algorithms for robot manipulation.
Our study analyzes the most critical challenges when learning from offline human data.
We highlight opportunities for learning from human datasets.
arXiv Detail & Related papers (2021-08-06T20:48:30Z) - Personalized Education in the AI Era: What to Expect Next? [76.37000521334585]
The objective of personalized learning is to design an effective knowledge acquisition track that matches the learner's strengths and bypasses her weaknesses to meet her desired goal.
In recent years, the boost of artificial intelligence (AI) and machine learning (ML) has unfolded novel perspectives to enhance personalized education.
arXiv Detail & Related papers (2021-01-19T12:23:32Z) - Importance Weighted Policy Learning and Adaptation [89.46467771037054]
We study a complementary approach which is conceptually simple, general, modular and built on top of recent improvements in off-policy learning.
The framework is inspired by ideas from the probabilistic inference literature and combines robust off-policy learning with a behavior prior.
Our approach achieves competitive adaptation performance on hold-out tasks compared to meta reinforcement learning baselines and can scale to complex sparse-reward scenarios.
arXiv Detail & Related papers (2020-09-10T14:16:58Z) - Dual Policy Distillation [58.43610940026261]
Policy distillation, which transfers a teacher policy to a student policy, has achieved great success in challenging tasks of deep reinforcement learning.
In this work, we introduce dual policy distillation(DPD), a student-student framework in which two learners operate on the same environment to explore different perspectives of the environment.
The key challenge in developing this dual learning framework is to identify the beneficial knowledge from the peer learner for contemporary learning-based reinforcement learning algorithms.
arXiv Detail & Related papers (2020-06-07T06:49:47Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.