| Literature DB >> 35747131 |
Ling Gu1.
Abstract
One of the most significant aspects of English teaching, as well as the embodiment of students' comprehensive English skill, is the cultivation of English learning ability. Teachers of English should help students understand the topic's material and be able to convey, describe, and analyze the topic's substance, such as summarizing, subjective judgments analysis, and tale continuation. Students' English learning is restricted by the learning environment, teachers' quality, students' own ability, and other aspects. Furthermore, schools and families do not prioritize English learning, resulting in low teacher expectations for English instruction, as well as a lack of English practice and strategy training among students. In order to improve the inefficiency of English teaching, this paper combines corpus technology with English teaching and proposes an online autonomous learning resource recommendation algorithm. The model is optimized in the aspects of high efficiency, diversity, and timeliness of learning resource recommendation supported by deep learning technology. The model is pretrained through the processed dataset, and the algorithm designed in this study is compared with the classical algorithm to verify the rationality and effectiveness of the algorithm designed in this study. Based on the previous studies, this study attempts to apply the teaching model combining corpus and recommendation algorithm to online teaching, so as to optimize English teaching model and teaching methods.Entities:
Mesh:
Year: 2022 PMID: 35747131 PMCID: PMC9211380 DOI: 10.1155/2022/9369258
Source DB: PubMed Journal: Comput Math Methods Med ISSN: 1748-670X Impact factor: 2.809
Figure 1Characteristics of online learning.
Figure 2Processing flow of corpus data.
Figure 3Block diagram of combination of deep learning and recommendation algorithm.
Figure 4Overall algorithm model.
Experimental environment.
| System environment | Windows 10 |
|---|---|
| GPU version | GTX1080Ti |
| Programming language | Python 3.6 |
| TensorFlow version | TensorFlow 1.8 |
| Anaconda version | Anaconda 4.9.2 |
Dataset statistics.
| Interactive data | Knowledge map | ||
|---|---|---|---|
| Learners number | 45637 | Types of entities | 13 |
| Learning resources number | 5063 | Entities number | 60875 |
| Interactions number | 2651618 | Relationship types | 16 |
| — | — | Relationship number | 82174 |
Performance comparison of AUC and ACC.
| Model | AUC | ACC |
|---|---|---|
| UDN-CBR | 0.852 | 0.811 |
| KGCN | 0.871 | 0.822 |
| DEKGCN | 0.911 | 0.833 |
| KNDP | 0.933 | 0.854 |
Figure 5Precision of Top@K.
Figure 6Recall of Top@K.