2021
DOI: 10.23917/khif.v7i2.13123
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Word Cloud of UKSW Lecturer Research Competence Based on Google Scholar Data

Abstract: There is a need in the Universitas Kristen Satya Wacana (UKSW) to identify the research competence of their faculties at a study program and University level. To accomplish this requirement, we need to automate the analysis of research output and publications quickly. Research articles are scattered in many publisher systems and journals which may be reputable, unreputable, accredited, and unaccredited. We devise a computer code to quickly and efficiently retrieve publication titles recorded in Google Scholar … Show more

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Cited by 2 publications
(2 citation statements)
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“…Pada tahap pencarian hasil analisa sentimen dan visualisasi data penulis memanfaatkan library wordcloud sebagai cara dalam mencari kata yang sering bermunculan pada sebuah dokumen dan disajikan ke dalam bentuk visual [13]. Adapun bentuk visualisasi data pada setiap kelas sentimen sebagaimana gambar berikut : Melihat hasil visualisasi data pada masing-masing kelas sentimen di atas, terlihat sentimen positif menunjukkan kata yang cukup dominan yaitu kata "kuliah" dan "giat".…”
Section: Hasil Analisa Sentimen Dan Visualisasi Dataunclassified
“…Pada tahap pencarian hasil analisa sentimen dan visualisasi data penulis memanfaatkan library wordcloud sebagai cara dalam mencari kata yang sering bermunculan pada sebuah dokumen dan disajikan ke dalam bentuk visual [13]. Adapun bentuk visualisasi data pada setiap kelas sentimen sebagaimana gambar berikut : Melihat hasil visualisasi data pada masing-masing kelas sentimen di atas, terlihat sentimen positif menunjukkan kata yang cukup dominan yaitu kata "kuliah" dan "giat".…”
Section: Hasil Analisa Sentimen Dan Visualisasi Dataunclassified
“…This process involves classifying text or documents into positive, neutral, and negative sentiments [5][6][7], thereby mitigating the adverse impact of negative comments, including hate speech. As a part of Natural Language Processing (NLP), a branch of artificial intelligence that processes and analyzes natural language [8,9], sentiment analysis aids researchers in identifying unfavorable comments prevalent on social media.…”
Section: Introductionmentioning
confidence: 99%