Yıl: 2022 Cilt: 23 Sayı: 1 Sayfa Aralığı: 49 - 79 Metin Dili: İngilizce DOI: 10.15612/BD.2022.645 İndeks Tarihi: 21-09-2022

The Evolution of Big Data in Knowledge Management: A Bibliometric Analysis

Öz:
Recently, the close relationship between big data and knowledge management has become one of the important agendas of businesses. The aim of this study is to systematize the literature on big data and knowledge management from a bibliometric perspective and to create a general framework for the past, present and future of the field. The present study examined 622 papers acquired from the Clarivate Analytics Web of Science (WoS) Core Collection database between 2013 and 2020. The results showed that the annual growth rate of the relevant field was found to be 42.9% indicating a higher popularity among researchers. China and USA are home to the most productive authors and institutions in the field. Also, country collaboration network, institutional co-authorship network, co-word network and co-citation network are given to present the intellectual structure of the field. This study is useful to understand leading trends in the field in terms of the most influential authors, institutions and countries, the most productive journals, the most frequent keywords, the collaboration networks and the co-citation networks. To the best of researchers’ knowledge, this study is the first bibliometric examination attempt to understand the flow at the intersection of big data and knowledge management over time.
Anahtar Kelime:

Bilgi Yönetiminde Büyük Verinin Evrimi: Bibliyometrik Bir Analiz

Öz:
Son zamanlarda büyük veri ve bilgi yönetimi arasındaki yakın ilişki, işletmelerin önemli gündemlerinden biri haline gelmiştir. Bu makalenin amacı, büyük veri ve bilgi yönetimi alanyazınını bibliyometrik bir bakış açısıyla inceleyerek alanın dünü, bugünü ve geleceği için genel bir çerçeve oluşturmaktır. Çalışmada 2013-2020 yılları arasında Clarivate Analytics Web of Science (WoS) Core Collection veri tabanından elde edilen 622 makale incelenmiştir. Analiz sonuçları, ilgili alanın yıllık büyüme oranının %42,9 olduğunu göstermekte ve bu da alanın araştırmacılar arasında yüksek bir popülerliğe sahip olduğuna işaret etmektedir. Çin ve ABD, bu alandaki en üretken yazarlara ve kurumlara ev sahipliği yapmaktadır. Ayrıca, alanın entelektüel yapısını ortaya koymak için ülke işbirliği ağı, kurumsal ortak yazarlık ağı, ortak kelime ağı ve ortak alıntı ağı verilmiştir. Bu çalışmanın, en etkili yazarlar, kurumlar ve ülkeler, en üretken dergiler, en sık kullanılan anahtar kelimeler, işbirliği ağları ve ortak atıf ağları açısından alandaki önde gelen eğilimleri anlamak için araştırmacılara yol gösterici olacağı düşünülmektedir. Araştırmacıların bilgisi dâhilinde, bu çalışma zaman içinde büyük veri ve bilgi yönetiminin kesişimini ve ilişkisini anlamaya yönelik yapılan ilk bibliyometrik inceleme girişimidir.
Anahtar Kelime:

Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
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APA KARABOGA T, SEHITOGLU Y, KARABOĞA H (2022). The Evolution of Big Data in Knowledge Management: A Bibliometric Analysis. , 49 - 79. 10.15612/BD.2022.645
Chicago KARABOGA TUGBA,SEHITOGLU Yasin,KARABOĞA Hasan Aykut The Evolution of Big Data in Knowledge Management: A Bibliometric Analysis. (2022): 49 - 79. 10.15612/BD.2022.645
MLA KARABOGA TUGBA,SEHITOGLU Yasin,KARABOĞA Hasan Aykut The Evolution of Big Data in Knowledge Management: A Bibliometric Analysis. , 2022, ss.49 - 79. 10.15612/BD.2022.645
AMA KARABOGA T,SEHITOGLU Y,KARABOĞA H The Evolution of Big Data in Knowledge Management: A Bibliometric Analysis. . 2022; 49 - 79. 10.15612/BD.2022.645
Vancouver KARABOGA T,SEHITOGLU Y,KARABOĞA H The Evolution of Big Data in Knowledge Management: A Bibliometric Analysis. . 2022; 49 - 79. 10.15612/BD.2022.645
IEEE KARABOGA T,SEHITOGLU Y,KARABOĞA H "The Evolution of Big Data in Knowledge Management: A Bibliometric Analysis." , ss.49 - 79, 2022. 10.15612/BD.2022.645
ISNAD KARABOGA, TUGBA vd. "The Evolution of Big Data in Knowledge Management: A Bibliometric Analysis". (2022), 49-79. https://doi.org/10.15612/BD.2022.645
APA KARABOGA T, SEHITOGLU Y, KARABOĞA H (2022). The Evolution of Big Data in Knowledge Management: A Bibliometric Analysis. Bilgi Dünyası, 23(1), 49 - 79. 10.15612/BD.2022.645
Chicago KARABOGA TUGBA,SEHITOGLU Yasin,KARABOĞA Hasan Aykut The Evolution of Big Data in Knowledge Management: A Bibliometric Analysis. Bilgi Dünyası 23, no.1 (2022): 49 - 79. 10.15612/BD.2022.645
MLA KARABOGA TUGBA,SEHITOGLU Yasin,KARABOĞA Hasan Aykut The Evolution of Big Data in Knowledge Management: A Bibliometric Analysis. Bilgi Dünyası, vol.23, no.1, 2022, ss.49 - 79. 10.15612/BD.2022.645
AMA KARABOGA T,SEHITOGLU Y,KARABOĞA H The Evolution of Big Data in Knowledge Management: A Bibliometric Analysis. Bilgi Dünyası. 2022; 23(1): 49 - 79. 10.15612/BD.2022.645
Vancouver KARABOGA T,SEHITOGLU Y,KARABOĞA H The Evolution of Big Data in Knowledge Management: A Bibliometric Analysis. Bilgi Dünyası. 2022; 23(1): 49 - 79. 10.15612/BD.2022.645
IEEE KARABOGA T,SEHITOGLU Y,KARABOĞA H "The Evolution of Big Data in Knowledge Management: A Bibliometric Analysis." Bilgi Dünyası, 23, ss.49 - 79, 2022. 10.15612/BD.2022.645
ISNAD KARABOGA, TUGBA vd. "The Evolution of Big Data in Knowledge Management: A Bibliometric Analysis". Bilgi Dünyası 23/1 (2022), 49-79. https://doi.org/10.15612/BD.2022.645