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http://dx.doi.org/10.23097/JPAF.2021.23(1):89

Analyzing Self-Introduction Letter of Freshmen at Korea National College of Agricultural and Fisheries by Using Semantic Network Analysis : Based on TF-IDF Analysis  

Joo, J.S. (Korea National College of Agriculture and Fisheries)
Lee, S.Y. (Korea National College of Agriculture and Fisheries)
Kim, J.S. (Korea National College of Agriculture and Fisheries)
Kim, S.H. (Korea National College of Agriculture and Fisheries)
Park, N.B. (Korea National College of Agriculture and Fisheries)
Publication Information
Journal of Practical Agriculture & Fisheries Research / v.23, no.1, 2021 , pp. 89-104 More about this Journal
Abstract
Based on the TF-IDF weighted value that evaluates the importance of words that play a key role, the semantic network analysis(SNA) was conducted on the self-introduction letter of freshman at Korea National College of Agriculture and Fisheries(KNCAF) in 2020. The top three words calculated by TF-IDF weights were agriculture, mathematics, study (Q. 1), clubs, plants, friends (Q. 2), friends, clubs, opinions, (Q. 3), mushrooms, insects, and fathers (Q. 4). In the relationship between words, the words with high betweenness centrality are reason, high school, attending (Q. 1), garbage, high school, school (Q. 2), importance, misunderstanding, completion (Q.3), processing, feed, and farmhouse (Q. 4). The words with high degree centrality are high school, inquiry, grades (Q. 1), garbage, cleanup, class time (Q. 2), opinion, meetings, volunteer activities (Q.3), processing, space, and practice (Q. 4). The combination of words with high frequency of simultaneous appearances, that is, high correlation, appeared as 'certification - acquisition', 'problem - solution', 'science - life', and 'misunderstanding - concession'. In cluster analysis, the number of clusters obtained by the height of cluster dendrogram was 2(Q.1), 4(Q.2, 4) and 5(Q. 3). At this time, the cohesion in Cluster was high and the heterogeneity between Clusters was clearly shown.
Keywords
Semantic network analysis; Association rules analysis; Betweenness centrality; Degree centrality;
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