月旦知識庫
 
  1. 熱門:
 
首頁 臺灣期刊   法律   公行政治   醫事相關   財經   社會學   教育   其他 大陸期刊   核心   重要期刊 DOI文章
國際應用科學與工程學刊 本站僅提供期刊文獻檢索。
  【月旦知識庫】是否收錄該篇全文,敬請【登入】查詢為準。
最新【購點活動】


篇名
The Bayesian CNN-LSTM classification model to predict and evaluate learner’s performance
並列篇名
The Bayesian CNN-LSTM classification model to predict and evaluate learner’s performance
作者 G. Sudhamathy (G. Sudhamathy)N. Valliammal (N. Valliammal)
英文摘要
Learning analytics (LA) is a research domain that leverages the analysis of data from the learning process to gain a deeper understanding and enhance learning outcomes. To classify learner performance, a model has been proposed that combines various deep learning techniques, including convolutional neural network (CNN), Long Short-Term Memory (LSTM), and Bayesian models. The integration of these approaches aims to improve the accuracy and effectiveness of performance classification. CNN is used for capturing the local information and LSTM neural network is used for the long-distance dependencies. The effective classification of learners' performance is achieved by combining the strengths of CNN and LSTM, along with the integration of a Bayesian deep learning model. The performance of the proposed model is estimated using the metrics like Accuracy, Precision, Recall and F1-Score. The model showed improvements in Accuracy, Precision, Recall and F1-Score are 98.18%, 97.09%, 96.38% and 95.35% respectively. The proposed model is compared with another existing model such as LSTM and collaborative machine learning (ML) models in terms of performance metrics. The proposed method attained accuracy of 98.18% which is higher than other existing models.
起訖頁 1-9
關鍵詞 BayesianConvolutional neural networkDeep learningLearning analyticsLong short-term memory
刊名 國際應用科學與工程學刊  
期數 202312 (20:4期)
出版單位 朝陽科技大學理工學院
該期刊-上一篇 Spam classification problems using support vector machine and grid search
該期刊-下一篇 Sustainable soil stabilization using marble dust waste on high plasticity soils: Physical and mechanical properties study
 

新書閱讀



最新影音


優惠活動




讀者服務專線:+886-2-23756688 傳真:+886-2-23318496
地址:臺北市館前路28 號 7 樓 客服信箱
Copyright © 元照出版 All rights reserved. 版權所有,禁止轉貼節錄