scispace - formally typeset
Journal ArticleDOI

Proposing stochastic probability-based math model and algorithms utilizing social networking and academic data for good fit students prediction

Reads0
Chats0
TLDR
The authors propose enhanced machine learning (supervised learning) framework for the prediction of the students through stochastic probability-based math constructs/model and an algorithm [Good Fit Student (GFS), along with the enhanced quantification of target variables and algorithmic metrics.
Abstract
The research progress presented in this paper comes under the areas of data science. The authors propose enhanced machine learning (supervised learning) framework for the prediction of the students through stochastic probability-based math constructs/model and an algorithm [Good Fit Student (GFS)], along with the enhanced quantification of target variables and algorithmic metrics. Academia in today’s modern world sees the problem of dropouts, low retention, poor student performances, lack of motivation, and unnecessary change of study majors and re-admissions. The authors consider this challenge as a research problem and attempt to solve it by utilizing social networking-based personality traits, relevant data and features to improve the predictive modeling approach. The authors recognize that admission choices are often governed by family trends, affordability, basic motivation, market trends, and natural instincts. However, natural gifts and talents are minimally used to select such directions in the academics. The authors based on literature review identify this a research gap and improves with a unique blend of algorithms/methods, an improved modeling of performance metrics, built upon cross-validation to improve fitness, and enhance the process of feature engineering and tuning for reduced errors and optimum fitness, at the end. The authors present the latest progress of their research in this paper. The included results show the progress of the work and ongoing improvements. The authors use machine learning techniques, Microsoft SQL Server, Excel data mining, R and Python to develop and test their model. The authors provide related work and conclude with final remarks and future work.

read more

Citations
More filters
Proceedings ArticleDOI

Predicting academic performance: a systematic literature review

TL;DR: In this paper, the authors present a systematic literature review of work in the area of predicting student performance, which shows a clearly increasing amount of research in this area, as well as an increasing variety of techniques used.
Journal ArticleDOI

Student performance analysis and prediction in classroom learning: A review of educational data mining studies

TL;DR: A systematic review of EDM studies on student performance in classroom learning focuses on identifying the predictors, methods used for such identification, time and aim of prediction, and is significantly the first systematic survey ofEDM studies that consider only classroom learning and focuses on the temporal aspect as well.
Journal ArticleDOI

Educational Big Data: Predictions, Applications and Challenges

TL;DR: A comprehensive overview of educational big data is provided, such as factors influencing students' academic performance, predicting models, evaluating indices, and the applications such as prediction, recommendation, and evaluation.
Journal ArticleDOI

Predictive analytic models of student success in higher education: A review of methodology

TL;DR: In this paper, the authors provide an overview of the methodological considerations for researchers and practitioners who are planning to develop or currently in the process of developing predictive student success models in the context of higher education.
Journal ArticleDOI

Proposing Enhanced Feature Engineering and a Selection Model for Machine Learning Processes

TL;DR: This paper proposes a novel approach to enhance the Feature Engineering and Selection (eFES) Optimization process in ML, built using a unique scheme to regulate error bounds and parallelize the addition and removal of a feature during training.
References
More filters
Book

Pattern Recognition and Machine Learning

TL;DR: Probability Distributions, linear models for Regression, Linear Models for Classification, Neural Networks, Graphical Models, Mixture Models and EM, Sampling Methods, Continuous Latent Variables, Sequential Data are studied.
Journal ArticleDOI

MapReduce: simplified data processing on large clusters

TL;DR: This paper presents the implementation of MapReduce, a programming model and an associated implementation for processing and generating large data sets that runs on a large cluster of commodity machines and is highly scalable.
Journal ArticleDOI

Pattern Recognition and Machine Learning

Radford M. Neal
- 01 Aug 2007 - 
TL;DR: This book covers a broad range of topics for regular factorial designs and presents all of the material in very mathematical fashion and will surely become an invaluable resource for researchers and graduate students doing research in the design of factorial experiments.
Journal ArticleDOI

MapReduce: simplified data processing on large clusters

TL;DR: This presentation explains how the underlying runtime system automatically parallelizes the computation across large-scale clusters of machines, handles machine failures, and schedules inter-machine communication to make efficient use of the network and disks.
Journal ArticleDOI

A Tutorial on Support Vector Machines for Pattern Recognition

TL;DR: There are several arguments which support the observed high accuracy of SVMs, which are reviewed and numerous examples and proofs of most of the key theorems are given.
Related Papers (5)