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      희귀도와 속성에 따른 수집품 NFT의 잠재계층 분류 및 가치 분석 = Latent Class Analysis of a Collectible NFT According to Rarity and Properties

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      https://www.riss.kr/link?id=A108707113

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      다국어 초록 (Multilingual Abstract) kakao i 다국어 번역

      A new approach was attempted to analyze the value of NFT, which is emerging as a major field in the digital environment along with cryptocurrency and metaverse. From the point of view that heterogeneous groups may exist in an NFT collection, latent class analysis, an object-oriented methodology, was applied. Existing NFT value studies focus on finding significant variables mainly through regression analysis, so there is a limitation in not considering the heterogeneity within the group. As an analysis result of the representative NFT, BAYC(Bored Ape Yacht Club), it can be divided into 8 heterogeneous groups (latent class) by NFT properties and rarity, and it was confirmed that the average value of each group differs by more than two times.
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      A new approach was attempted to analyze the value of NFT, which is emerging as a major field in the digital environment along with cryptocurrency and metaverse. From the point of view that heterogeneous groups may exist in an NFT collection, latent cl...

      A new approach was attempted to analyze the value of NFT, which is emerging as a major field in the digital environment along with cryptocurrency and metaverse. From the point of view that heterogeneous groups may exist in an NFT collection, latent class analysis, an object-oriented methodology, was applied. Existing NFT value studies focus on finding significant variables mainly through regression analysis, so there is a limitation in not considering the heterogeneity within the group. As an analysis result of the representative NFT, BAYC(Bored Ape Yacht Club), it can be divided into 8 heterogeneous groups (latent class) by NFT properties and rarity, and it was confirmed that the average value of each group differs by more than two times.

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      참고문헌 (Reference)

      1 이근철 ; 이희정 ; 구훈영, "헤도닉 모형을 이용한 프로필 사진 NFT의 가치 영향 요인 분석" 대한산업공학회 49 (49): 46-62, 2023

      2 김영서 ; 홍세희, "청소년 창업체험활동 참여의 잠재계층과 영향요인 및 성과 분석" 한국청소년정책연구원 32 (32): 5-29, 2021

      3 이혜민 ; 이은정 ; 송영수, "잠재 계층 분석(LCA)을 이용한 기업혁신유형과 성과와의 관계 탐색" 한국기업교육학회 22 (22): 255-284, 2020

      4 백승희 ; 정혜원, "대학 입학생의 대학생활 성과에 대한 잠재계층 분류 및 영향요인 탐색: 입학사정관 전형 입학 여부를 중심으로" 교육연구소 17 (17): 251-280, 2016

      5 NonFungible, "Yearly NFT Market Report 2021"

      6 Ante, L., "The Non-fungible Token (NFT) Market and Its Relationship with Bitcoin and Ethereum" 1 (1): 216-224, 2022

      7 Koford, K., "The Market Value of Rarity" 34 (34): 445-457, 1998

      8 Goldberg, M., "The Economics of Blockchain-basedvirtual Worlds: A Hedonic Regression Model for Virtual Land"

      9 Lo, Y., "Testing the Number of Components in a Normal Mixture" 88 (88): 767-778, 2001

      10 Horky, F., "Price Determinants of Non-fungible Tokens in the Digital Art Market" 48 : 103007-, 2022

      1 이근철 ; 이희정 ; 구훈영, "헤도닉 모형을 이용한 프로필 사진 NFT의 가치 영향 요인 분석" 대한산업공학회 49 (49): 46-62, 2023

      2 김영서 ; 홍세희, "청소년 창업체험활동 참여의 잠재계층과 영향요인 및 성과 분석" 한국청소년정책연구원 32 (32): 5-29, 2021

      3 이혜민 ; 이은정 ; 송영수, "잠재 계층 분석(LCA)을 이용한 기업혁신유형과 성과와의 관계 탐색" 한국기업교육학회 22 (22): 255-284, 2020

      4 백승희 ; 정혜원, "대학 입학생의 대학생활 성과에 대한 잠재계층 분류 및 영향요인 탐색: 입학사정관 전형 입학 여부를 중심으로" 교육연구소 17 (17): 251-280, 2016

      5 NonFungible, "Yearly NFT Market Report 2021"

      6 Ante, L., "The Non-fungible Token (NFT) Market and Its Relationship with Bitcoin and Ethereum" 1 (1): 216-224, 2022

      7 Koford, K., "The Market Value of Rarity" 34 (34): 445-457, 1998

      8 Goldberg, M., "The Economics of Blockchain-basedvirtual Worlds: A Hedonic Regression Model for Virtual Land"

      9 Lo, Y., "Testing the Number of Components in a Normal Mixture" 88 (88): 767-778, 2001

      10 Horky, F., "Price Determinants of Non-fungible Tokens in the Digital Art Market" 48 : 103007-, 2022

      11 "OpenSea"

      12 Schaar, L., "Non-fungible Tokens as An Alternative Investment: Evidence from Cryptopunks" 31949-, 2022

      13 Kräussl, R., "Non-Fungible Tokens (NFTs): A Review of Pricing Determinants, Applications and Opportunities"

      14 Aharon, D. Y., "NFTs and Asset Class Spillovers:Lessons from the Period Around the COVID-19 Pandemic" 47 : 102515-, 2022

      15 Kireyev, P., "NFT Marketplace Design and Market Intelligence" 2022

      16 Choo, J. Y., "Multilayer Latent Profile and Analysis of Influencing Factors on Academic Achievement and School Adaptation of Elementary, Middle, and High School Students" Ewha Womans University 2022

      17 Morgan, G. B., "Mixed Mode Latent Class Analysis: An Examination of Fit Index Performance for Classification" 22 (22): 76-86, 2015

      18 Burton, B. J., "Measuring Returns on Investments in Collectibles" 13 (13): 193-212, 1999

      19 Nadini, M., "Mapping the NFT Revolution:Market Trends, Trade Networks, and Visual Features" 11 (11): 1-11, 2021

      20 Muthén, B., "Latent Variable Analysis" 345 (345): 106-109, 2004

      21 Dowling, M., "Is Non-fungible Token Pricing Driven by Cryptocurrencies?" 44 : 102097-, 2022

      22 Wu, Y., "How does Scarcity Promotion Lead to Impulse Purchase in the Online Market? A Field Experiment" 58 (58): 103283-, 2021

      23 Mekacher, A., "How Rarity Shapes the NFT Market"

      24 Hughes, J. E., "Demand for Rarity: Evidence from a Collectible Good" 70 (70): 147-167, 2022

      25 "BAYC"

      26 Asparouhov, T., "Auxiliary Variables in Mixture Modeling: Three-step Approaches Using M Plus" 21 (21): 329-341, 2014

      27 Kong, D. R., "Alternative Investments in the Fintech Era: The Risk and Return of Non-Fungible Token (NFT)"

      28 Ram, S., "A Model of Innovation Resistance" 1987

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