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NTIS 바로가기지능정보연구 = Journal of intelligence and information systems, v.28 no.3, 2022년, pp.259 - 278
김하영 (국민대학교 TED 스마트경험디자인학과) , 허정윤 (국민대학교 TED 스마트경험디자인학과) , 권호창 (성균관대학교 트랜스미디어 연구소)
With the spread of Artificial Intelligence (AI), various AI-based services are expanding in the financial sector such as service recommendation, automated customer response, fraud detection system(FDS), credit scoring services, etc. At the same time, problems related to reliability and unexpected so...
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