ABSTRACT

Neurological, behavioral, and cognitive problems in teenage students are rising day by day. It is very important to handle these issues by gathering information from public opinion. The distribution of public opinion information in student work is unsystematic, and it is difficult to extract the needed information intelligently. An intelligent extraction algorithm of public opinion data from student work is proposed in this research and is based on human–computer interaction, machine learning, and computational techniques. In the student work, a fuzzy semantic autocorrelation mapping feature set of public opinion information is developed together with a spatial structural model of data semantic distribution features. The statistical feature quantity of semantic similarity of the public opinion data is retrieved from the student work, and the semantic ambiguity is decreased. Analyses using adaptive learning and machine understanding and human–computer interaction are used to process it. In the human–computer interaction machine understanding center, the processor adjusts the grid partition of public opinion information of the student work according to the difference of statistical features, then constructs the feature decomposition model of student behavior, and then performs context mapping. Finally, the semantic analysis is carried out to analyze the student behavior based on the cognitive study. The simulation outcomes demonstrate that the proposed method is computationally inexpensive, has low time complexity, and has real-time monitoring ability of public opinion information on student behavior.

References

1.
M.
 
Wan
and
C.
 
Jiang
, “
Research on the Role of Network Resource Allocation in University Information Technology Teaching Research
” (in Chinese),
Wireless Internet Technology
17
, no. 
14
(
2020
):
131
132
.
2.
M.
 
Xie
and
L.
 
Zhang
, “
Research on Innovative Strategies of Modern University Library Management Under Network Environment
,”
Tea in Fujian
42
, no. 
1
(January
2020
):
197
.
3.
L.
 
Zhou
and
S.
 
Zhu
, “
Practice and Thinking on the Construction of University Network Information Security System
,”
Journal of Shenzhen University Science and Engineering
37
, no. 
Z1
(January
2020
):
73
77
.
4.
J. K.
 
Xiao
and
G. S.
 
Li
, “
Analysis on the Evolution of Network Public Opinion of University Emergencies — A Case Study of ‘Wusun Dormitory Requisition’ Event
,”
Journal of News Research
11
, no. 
11
(June
2020
):
52
53
.
5.
J.
 
Lu
, “
Method and Demonstration of University Network Public Opinion Monitoring Based on LDA-BiLSTM Model
” (in Chinese),
Information Studies: Theory & Application
43
, no. 
11
(
2020
): 156–161.
6.
J.-L.
 
Zheng
,
Y.-L.
 
Zhang
,
J.-X.
 
Tian
,
Z.-H.
 
Huang
, and
Y.
 
Liang
, “
Extraction and Analysis of Hot Points in Campus Public Opinion
” (in Chinese),
Software Guide
19
, no. 
4
(
2020
):
61
66
.
7.
X.
 
Jin
and
L.
 
Zhang
, “
Multi-level k-Means Clustering Algorithm Based on Minimum Spanning Tree and Its Application in Data Mining
” (in Chinese),
Journal of Jilin University (Science Edition)
56
, no. 
5
(
2018
):
1187
1192
.
8.
Q.
 
Wei
, “
Research on Internet Public Opinion Governance in Information Content Security Incidents
” (in Chinese),
Journal of Beijing Electronic Science and Technology
28
, no. 
4
(
2020
):
49
55
.
9.
X.-Q.
 
Cheng
,
X.-L.
 
Jin
,
Y.-Z.
 
Wang
,
J.-F.
 
Guo
,
T.-Y.
 
Zhang
, and
G.-J.
 
Li
, “
Survey on Big Data System and Analytic Technology
” (in Chinese),
Journal of Software
25
, no. 
9
(
2014
):
1889
1908
.
10.
L.
 
Li
and
Q.
 
Weng
, “
Self-Adaptive Differential Evolution Algorithm Based on Opposition-Based Learning
” (in Chinese),
Journal of Computer Applications
38
, no. 
2
(February
2018
):
399
404
.
11.
S.
 
Bi
,
C. K.
 
Ho
and
R.
 
Zhang
, “
Wireless Powered Communication: Opportunities and Challenges
,”
IEEE Communications Magazine
53
, no. 
4
(April
2015
):
117
125
.
12.
S.
 
Ulukus
,
A.
 
Yener
,
E.
 
Erkip
,
O.
 
Simeone
,
M.
 
Zorzi
,
P.
 
Grover
, and
K.
 
Huang
, “
Energy Harvesting Wireless Communications: A Review of Recent Advances
,”
IEEE Journal on Selected Areas in Communications
33
, no. 
3
(March
2015
):
360
381
.
13.
S.
 
Gao
,
J.
 
Bao
,
X.
 
Wang
, and
L.
 
Wang
, “
Interpretable Ordered Clustering Method and Its Application Analysis
” (in Chinese),
Journal of Computer Applications
42
, no. 
2
(
2022
):
457
462
.
14.
Y.
 
Li
,
C.
 
Du
,
Y.
 
Yang
, and
X.
 
Li
, “
Feature Selection Algorithm for Imbalanced Data Based on Pseudo-label Consistency
” (in Chinese),
Journal of Computer Applications
42
, no. 
2
(
2022
):
475
484
.
15.
N.
 
Zhao
,
S.
 
Zhang
,
F. R.
 
Yu
,
Y.
 
Chen
,
A.
 
Nallanathan
, and
V. C. M.
 
Leung
, “
Exploiting Interference for Energy Harvesting: A Survey, Research Issues, and Challenges
,”
IEEE Access
5
(
2017
):
10403
10421
.
16.
Y.-L.
 
Li
and
J.
 
Dong
, “
Study and Improvement of MapReduce Based on Hadoop
” (in Chinese),
Computer Engineering and Design
33
, no. 
8
(
2012
):
3110
3116
.
17.
S.
 
Dong
and
Z.
 
Li
, “
Acquisition and Analysis of Hot Public Opinion Information on Weibo Using Scrapy Distributed Crawler Technology
” (in Chinese),
Computers and Information Technology
28
, no. 
5
(
2020
):
23
26
.
18.
F.-J.
 
Dong
and
W.-X.
 
Zhang
, “
The Design of a Distributed Subject Public Opinion Collection and Analysis System
” (in Chinese),
Software Guide
19
, no. 
11
(
2020
):
116
119
.
19.
R.
 
Liu
,
X.
 
He
,
Y.
 
Nan
, and
B.
 
Wang
, “
Mining Method of Public Opinion Related Topic in Network Multimedia Data
,”
Journal of Shenzhen University Science and Engineering
37
, no. 
1
(January
2020
):
72
78
.
20.
W.
 
Zhang
,
X.-B.
 
Cao
, and
H.-Z.
 
Yin
, “
Chat Room Social Network Mining Based on Multi-features Fusion
” (in Chinese),
Journal of University of Science and Technology of China
39
, no. 
5
(
2009
):
540
546
.
21.
H.
 
Yang
,
T.
 
Li
, and
X.
 
Chen
, “
Visualization of Time Series Data Based on Spiral Graph
,”
Journal of Computer Application
37
, no. 
9
(
2017
):
2443
2448
.
22.
X.
 
Wang
and
P.
 
Zhu
, “
Research on Automatic Semantic Role Annotation in Chinese Based on Fuzzy Mechanism and Semantic Density Clustering
” (in Chinese),
Computer Applications and Software
36
, no. 
9
(
2019
):
76
82
, 92.
23.
W.
 
Sun
,
Z.
 
Deng
,
Q.
 
Lou
,
X.
 
Gu
, and
S.
 
Wang
, “
Unsupervised Heterogeneous Domain Adaptation with Fuzzy Rule Learning
” (in Chinese),
Journal of Frontiers of Computer Science and Technology
16
, no. 
2
(
2022
):
403
412
.
24.
Q.
 
Yao
, “
Health Tourism Resource Information Retrieval Based on Fuzzy Clustering
” (in Chinese),
Journal of Langfang Normal University (Natural Science Edition)
20
, no. 
1
(
2020
):
81
85
.
25.
X.
 
He
,
J.
 
Xu
,
B.
 
Wang
,
H.
 
Wu
, and
B.
 
Zhang
, “
Research on Cloud Computing Resource Load Forecasting Based on GRU-LSTM Combination Model
” (in Chinese),
Computer Engineering
48
, no. 
5
(
2022
):
11
17
, 34.
You do not currently have access to this content.