| Literature DB >> 36211855 |
Xin Wang1, Simon Smith2.
Abstract
The continuous development of Human-Computer Interaction (HCI) and information technologies impact the digital learning environment. The network and multimedia technologies change the Autonomous Learning System (ALS) structure. The learning process uses several techniques; however, the interactive function requires continuous improvement to enhance autonomous learning. Therefore, Optimized Deep Learning Network (ODNN) is introduced to build the Autonomous English Learning System (AELS) in this work. The ODNN system uses the learning and activation functions that derive the student's learning capabilities and gives the proper training to the student. The HCI-based created autonomous learning process provides the guidelines to the student for making independent learning. The ALS improves the student's learning ability and skills compared to classroom-based learning. The discussed ODNN-based AELS system effectiveness is evaluated using the Japanese-English Bilingual Corpus with a set of assessment questionaries. Then the HCI-based autonomous English learning is a quantitative analysis with the classroom-based learning. The discussed system is implemented using the Python tool, in which the AELS system ensures 98.51% learning efficiency compared to classroom learning.Entities:
Keywords: Optimized Deep Learning Network (ODNN); autonomous English learning system (AELS); education system; human-computer interaction (HCI); independent learning
Year: 2022 PMID: 36211855 PMCID: PMC9533088 DOI: 10.3389/fpsyg.2022.989884
Source DB: PubMed Journal: Front Psychol ISSN: 1664-1078
FIGURE 1HCI with ODNN-based AELS structure.
FIGURE 2CBOW-neural model structure.
FIGURE 3Working process of ODNN.
Working process of HCI with ODNN based AELS.
| Step 1: Collect the English sentence from the experts and form the database |
| Step 2: Analyzing the student inputs and unwanted information like punctuation, stop words and lower case details are removed. |
| Step 3: Applying the word embedding process to extracting the vectors and position details |
| Step 4: Evaluate the vectors using the neural model to identify and verify the student answer. |
| Step 5: Compare the output with the database template |
| Step 6: if the variation is high then the network parameter needs to be updated using bee colony algorithm |
| Step 7: Select the network parameter according to the solution probability value |
| Step 8: Estimate the students learning efficiency value. |
| Step 9: Repeat the process. |
FIGURE 4Student textbook and AELS App-based learning process efficiency.
FIGURE 5Accuracy analysis (A) classroom learning (B) AELS learning.
FIGURE 6Error rate analysis.
Learning efficiency analysis.
| Questions | Classroom learning | ODNN-AELS system | ||
| Learning efficiency | Learning interest | Learning efficiency | Learning interest | |
| 1 | 4.8 | 5.9 | 8.93 | 9.34 |
| 2 | 4.92 | 5.19 | 9.09 | 9.54 |
| 3 | 6.7 | 5.83 | 9.34 | 9.62 |
| 4 | 5.34 | 6.2 | 9.76 | 9.48 |
| 5 | 6.1 | 6.45 | 9.84 | 9.84 |
| 6 | 6.4 | 6.23 | 9.76 | 9.7 |
| 7 | 5.98 | 6.02 | 9.45 | 9.8 |
| 8 | 6.02 | 6.12 | 9.74 | 9.45 |
| 9 | 6.34 | 6.2 | 9.74 | 9.87 |
| 10 | 6.3 | 6.28 | 8.97 | 9.03 |
FIGURE 7Precision analysis of (A) classroom and (B) AELS learning.
FIGURE 8Recall Analysis of (A) classroom and (B) AELS learning.