TY - JOUR T1 - SPORCU BESLENMESİ İLE İLGİLİ YOUTUBE VİDEO YORUMLARININ DUYGU ANALİZİ TT - SENTIMENT ANALYSIS OF YOUTUBE VIDEOS COMMENTS ON SPORTS NUTRITION AU - Eyipınar, Cemre Didem AU - Buyukkalkan, Ferhat AU - Semiz, Kıvanç PY - 2021 DA - December Y2 - 2021 JF - Uluslararası Beden Eğitimi Spor ve Teknolojileri Dergisi JO - BEST PB - Zafer DOĞRU WT - DergiPark SN - 2717-8447 SP - 27 EP - 39 VL - 2 IS - 2 LA - tr AB - Farklı sosyal ağlarda profil oluşturan kullanıcı sayısının hızla artması, bu alanları çeşitli konularda ana veri kaynağı haline getirmiştir. Sağlıklı beslenme ile ilgili sosyal ağlarda yapılan yorumlar genel anlamda bireylerin besin seçimleri ve farkındalıkları hakkındaki varsayımları yansıtsa da insanların sporcu beslenmesi açısından neler tartıştıkları hakkında çok az şey bilinmektedir. Bu çalışmada, sporcu beslenmesiyle ilgili YouTube videolarına ait yorumların duygu içerip içermediği, eğer içeriyorsa bu duygunun olumlu ya da olumsuz olma durumunun metin madenciliği tekniğiyle belirlenmesi gerçekleştirilmiştir. Yapılan analiz sonucunda, sporcu beslenmesi ile ilgili YouTube videolarından elde edilen yorumların %27,62’sinin pozitif, %17,3’ünün negatif, %55,08’inin ise nötr olduğu tespit edilmiştir. Kullanıcıların kreatin ve BCAA (Dallı zincirli amino asit) suplemanlarının tüketimi hakkında olumsuz düşündüğü, karbonhidratlar hakkında nötr; protein kullanımı hakkındaysa hem negatif hem pozitif hem de nötr duygulara sahip oldukları belirlenmiştir. KW - Duygu Analizi KW - Sporcu Beslenmesi KW - YouTube Yorumları N2 - The dramatic increase in the number of users creating profiles in different social networks has made these fields the main source of data on various topic. Although the comments made on social networks about healthy eating generally reflect assumptions about individuals' food choices and awareness, little is known about what people are discussing in terms of sports nutrition. The aim of this study is realize YouTube videos about sport nutrition whether contain sentiment or not, and if so whether this sentiment is positive or negative throught text mining technique. Result of analysis, it was determined that 27.62% of the comments obtained from YouTube videos about sport nutrition were positive, 17.3% were negative, and 55.08% were neutral. Additionaly it has been determined that YouTube users had neutral sentiment about carbohydrates, negative sentiment about the use of creatine and BCAA (Branched-chain amino acid) supplements, alongside they had both negative, positive and neutral sentiments about protein use. CR - Albayrak, A. (2020). Doğal Dil İşleme Teknikleri Kullanılarak Disiplinler Arası Lisansüstü Ders İçeriği Hazırlanması. 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