Uso de eduTech en educación
Este capítulo analiza el uso de tecnologías digitales en educación, por medio del análisis comparado usando técnicas de procesamiento de lenguaje natural (PLN) de 680 documentos, encontrados el 9 de abril de 2024 en Scopus.
Búsqueda de edutech en educación
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topic beta words
------- ---------- -------------
1 0.01356 system
1 0.01299 learning
1 0.01289 based
1 0.008979 design
1 0.008895 systems
1 0.007718 web
1 0.007348 development
1 0.007082 network
1 0.006731 analysis
1 0.006493 teaching
2 0.02332 digital
2 0.02243 students
2 0.0147 study
2 0.01044 technology
2 0.009858 school
2 0.009796 elementary
2 0.009717 education
2 0.009579 learning
2 0.00881 teachers
2 0.008453 results
3 0.01731 digital
3 0.01641 education
3 0.01625 teachers
3 0.01426 technology
3 0.01332 students
3 0.01227 elementary
3 0.01029 teaching
3 0.008852 school
3 0.008442 science
3 0.008184 learning
4 0.02116 digital
4 0.021 students
4 0.01668 school
4 0.01551 technology
4 0.01174 elementary
4 0.01145 learning
4 0.01121 literacy
4 0.01112 research
4 0.01008 information
4 0.009487 education
5 0.01932 education
5 0.01822 digital
5 0.01444 school
5 0.01179 schools
5 0.01078 elementary
5 0.01007 study
5 0.009794 children
5 0.008643 students
5 0.007974 educational
5 0.007632 research
6 0.03287 learning
6 0.03251 teachers
6 0.02347 digital
6 0.01569 technology
6 0.01475 teaching
6 0.01374 education
6 0.0115 students
6 0.01076 elementary
6 0.01073 study
6 0.009825 teacher
7 0.02109 education
7 0.01801 digital
7 0.01201 students
7 0.009308 elementary
7 0.008989 technology
7 0.007756 based
7 0.007294 development
7 0.007275 research
7 0.006939 educational
7 0.006768 system
8 0.05836 learning
8 0.0214 students
8 0.01546 based
8 0.0136 game
8 0.01287 education
8 0.01134 digital
8 0.01012 technology
8 0.008202 approach
8 0.007794 elementary
8 0.007285 study
9 0.02636 students
9 0.01768 learning
9 0.01366 technology
9 0.01334 education
9 0.0133 digital
9 0.01325 school
9 0.01051 elementary
9 0.009421 science
9 0.008232 research
9 0.007524 study
10 0.02255 students
10 0.02014 digital
10 0.01962 learning
10 0.01151 study
10 0.0106 education
10 0.009957 reading
10 0.008989 school
10 0.008411 technology
10 0.008257 elementary
10 0.007739 music
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Document-feature matrix of: 680 documents, 7,410 features (98.70% sparse) and 4 docvars.
features
docs digit technolog primari educ can distract increas attent mani student
text1 3 2 2 5 1 1 2 3 1 2
text2 2 4 0 2 1 0 1 0 0 2
text3 1 2 0 2 2 0 0 0 0 1
text4 2 1 0 3 0 0 0 0 0 0
text5 1 1 0 0 0 0 0 0 0 4
text6 1 1 0 4 0 0 0 0 0 0
[ reached max_ndoc ... 674 more documents, reached max_nfeat ... 7,400 more features ]
learn educ student use digit technolog school
1746 1697 1585 1509 1493 1391 1159
teacher studi elementari
1001 858 788
technolog digit elementari © educ use school
603 598 592 577 575 523 487
student learn studi develop research teacher result
481 459 406 396 337 330 324
teach
276
quantiz binari under-estim ict-secur poll
1 1 1 1 1
246 knew end-us need-driven content-driven
1 1 1 1 1
reconsid k12-ds nian-sh honor wine
1 1 1 1 1
[1] 680
[1] 1973
[1] 10594
learning digital students education technology elementary teachers
1626 1457 1381 1112 868 788 777
school study use
763 694 598
[1] 33 33
Feature co-occurrence matrix of: 6 by 33 features.
features
features digital technology education can students educational skills
digital 3568 1933 2534 1061 3338 951 804
technology 0 921 1459 512 1984 754 305
education 0 0 1553 715 2265 881 412
can 0 0 0 229 853 309 165
students 0 0 0 0 2516 834 650
educational 0 0 0 0 0 396 158
features
features teachers research data
digital 3300 1336 1044
technology 1253 765 494
education 1541 945 573
can 594 302 133
students 1620 1200 798
educational 516 394 275
[ reached max_nfeat ... 23 more features ]

# A tibble: 9,676 × 2
word n
<chr> <int>
1 learning 1715
2 digital 1469
3 students 1382
4 education 1123
5 technology 934
6 school 805
7 elementary 799
8 teachers 780
9 study 699
10 based 636
# ℹ 9,666 more rows
# A tibble: 6,786 × 2
word sentiment
<chr> <chr>
1 2-faces negative
2 abnormal negative
3 abolish negative
4 abominable negative
5 abominably negative
6 abominate negative
7 abomination negative
8 abort negative
9 aborted negative
10 aborts negative
# ℹ 6,776 more rows
