scholarly journals Model for Analyzing Psychological Parameters Recommending Student Learning Behavior using Machine Learning

2021 ◽  
Vol 10 (1) ◽  
pp. 973-990
Author(s):  
Iti Burman ◽  
Subhranil Som ◽  
Syed Akhter Hossain
2020 ◽  
Vol 1 (2) ◽  
Author(s):  
Jacob M. Remington ◽  
Jonathon B. Ferrell ◽  
Marlo Zorman ◽  
Adam Petrucci ◽  
Severin T. Schneebeli ◽  
...  

ABSTRACT Recent advances in computer hardware and software, particularly the availability of machine learning (ML) libraries, allow the introduction of data-based topics such as ML into the biophysical curriculum for undergraduate and graduate levels. However, there are many practical challenges of teaching ML to advanced level students in biophysics majors, who often do not have a rich computational background. Aiming to overcome such challenges, we present an educational study, including the design of course topics, pedagogic tools, and assessments of student learning, to develop the new methodology to incorporate the basis of ML in an existing biophysical elective course and engage students in exercises to solve problems in an interdisciplinary field. In general, we observed that students had ample curiosity to learn and apply ML algorithms to predict molecular properties. Notably, feedback from the students suggests that care must be taken to ensure student preparations for understanding the data-driven concepts and fundamental coding aspects required for using ML algorithms. This work establishes a framework for future teaching approaches that unite ML and any existing course in the biophysical curriculum, while also pinpointing the critical challenges that educators and students will likely face.


2019 ◽  
Vol 14 (2) ◽  
pp. 97-106
Author(s):  
Ning Yan ◽  
Oliver Tat-Sheung Au

Purpose The purpose of this paper is to make a correlation analysis between students’ online learning behavior features and course grade, and to attempt to build some effective prediction model based on limited data. Design/methodology/approach The prediction label in this paper is the course grade of students, and the eigenvalues available are student age, student gender, connection time, hits count and days of access. The machine learning model used in this paper is the classical three-layer feedforward neural networks, and the scaled conjugate gradient algorithm is adopted. Pearson correlation analysis method is used to find the relationships between course grade and the student eigenvalues. Findings Days of access has the highest correlation with course grade, followed by hits count, and connection time is less relevant to students’ course grade. Student age and gender have the lowest correlation with course grade. Binary classification models have much higher prediction accuracy than multi-class classification models. Data normalization and data discretization can effectively improve the prediction accuracy of machine learning models, such as ANN model in this paper. Originality/value This paper may help teachers to find some clue to identify students with learning difficulties in advance and give timely help through the online learning behavior data. It shows that acceptable prediction models based on machine learning can be built using a small and limited data set. However, introducing external data into machine learning models to improve its prediction accuracy is still a valuable and hard issue.


2019 ◽  
Vol 38 (3) ◽  
pp. 499-510
Author(s):  
Imam Suyitno ◽  
Yuni Pratiwi ◽  
Roekhan Roekhan ◽  
Martutik Martutik

Many learning theories explain that prior knowledge, prospects, and learning behavior affect student learning outcomes. Related with these theories, this study aimed to describe these three variables for graduate students and their correlation in learning in the BIPA elective program (Bahasa Indonesia untuk Penutur Asing/Indonesian Language for Native Speakers). In addition, this study also described the implications of these three variables on student learning outcomes. Therefore, this study used a quantitative approach involving 17 graduate students who choose BIPA specialization programs. Data about the prospects and learning behavior were collected using a questionnaire, while the student's prior knowledge data was collected using a test instrument that contained general knowledge about BIPA. Meanwhile, student learning outcomes were obtained from student achievement index modified to a standard score. Data analysis used multiple correlation techniques. The findings of the study indicate that the prior knowledge of students about BIPA is in a low category, their prospects and learning behavior are in the high category, and the achievement index shows that their learning outcomes are in the very high category. Student prior knowledge does not correlate with prospects and learning behavior, whereas student learning behavior correlates with their prospects. Simultaneously, the three variables do not correlate with their learning outcomes.


2021 ◽  
Vol 4 (1) ◽  
pp. 210-215
Author(s):  
Nurpaujiah Br. Pahutar ◽  
Rosmawati Harahap ◽  
Sardjijo Sardjijo

This study aims to determine the implementation of character education on learning behavior and tolerance attitudes of students in elementary schools in the Aek Natas district. This type of research is a quantitative study using a survey method by distributing questionnaires. Primary data sources are obtained from direct respondents' answers in answering questionnaires. So the samples in this study were 81 teachers and 91 students who would be divided as many as 27 schools. Implementation of Character Education on Learning Behavior and Tolerance Attitudes of Elementary School Students in Aek Natas District shows a very strong relationship between variable X (Implementation of Character Education) of 1.00, a strong correlation to Variable Y1 (Learning Behavior) of 0, 688 and a strong correlation. while the variable Y2 (Student Tolerance Attitude) is 0.580. For the Y1 variable (Student Learning Behavior) with a constant value on the coefficient of 6,757 with a standard error of 1,906, the t value of 3,545 states that the implementation of character education on student learning behavior is significant at the 0.01 level. for the Y2 variable (Student Tolerance Attitudes) With a constant value on the coefficient of 201,531 with a standard error of 4.076, the t value of 669 states that the implementation of character education on students' tolerance attitudes is significant at the 0.066 level.


2019 ◽  
Vol 13 (1) ◽  
pp. 13
Author(s):  
Abdurahman Wahid Abdullah

AbstrakDalam rangka mewujudkan tujuan pendidikan nasional, pihak penyelenggara pendidikan seharusnya tidak hanya memfokuskan perhatian pada hal-hal yang sifatnya fisik saja tetapi lebih daripada itu perlu ada perhatian yang lebih terhadap keteladanan yang merupakan hasil dari pemberian stimulus dan respon terhadap perilaku dosen. Metode yang digunakan penulis adalah metode analisis data deduktif dengan jenis penelitian kualitatif deskriptif. Hasil penelitian menyatakan bahwa keteladanan dosen sangat berperan dalam meningkatkan motivasi dan perilaku belajar mahasiswa. Kesimpulan tersebut diperoleh dari menganalisa konsep keteladanan dalam teori belajar behaviouristik dengan cara mengkorelasikannya dengan kajian tentang pemberian model atau contoh dari pendidik sehingga dapat mempengaruhi motif dan perilaku mahasiswa dalam belajar.Kata kunci:      Keteladanan Pendidik, Perilaku Belajar Mahasiswa. AbstractIn order to realize the goals of national education, the organizers of education should not only focus on matters of a physical nature but more than that there needs to be more attention to the example that is the result of providing stimulus and response to the behavior of lecturers. The method used by the author is a method of deductive data analysis with a type of descriptive qualitative research. The results of the study stated that lecturer exemplary was very instrumental in increasing student motivation and learning behavior. The conclusion was obtained from analyzing the concept of exemplary in behaviouristic learning theory by correlating it with the study of giving models or examples from educators so that they can influence students' motives and behavior in learning.Keywords:        Exemplary Educator, Student Learning Behavior


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