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2023 | 14 | nr 3 | 769--793
Tytuł artykułu

Big Data Management Algorithms in Artificial Internet of Things-based Fintech

Warianty tytułu
Języki publikacji
EN
Abstrakty
EN
Research background: Fintech companies should optimize banking sector performance in assisting enterprise financing as a result of firm digitalization. Artificial IoT-based fintechbased digital transformation can relevantly reverse credit resource misdistribution brought about by corrupt relationship chains.
Purpose of the article: We aim to show that fintech can decrease transaction expenses and consolidates firm stock liquidity, enabling excess leverage decrease and cutting down information asymmetry and transaction expenses across capital markets. AI- and IoT-based fintechs enable immersive and collaborative financial transactions, purchases, and investments in relation to payment tokens and metaverse wallets, managing financial data, infrastructure, and value exchange across shared interactive virtual 3D and simulated digital environments.
Methods: AMSTAR is a comprehensive critical measurement tool harnessed in systematic review methodological quality evaluation, DistillerSR is harnessed in producing accurate and transparent evidence-based research through literature review stage automation, MMAT appraises and describes study checklist across systematic mixed studies reviews in terms of content validity and methodological quality predictors, Rayyan is a responsive and intuitive knowledge synthesis tool and cloud-based architecture for article inclusion and exclusion suggestions, and ROBIS appraises systematic review bias risk in relation to relevance and concerns. As a reporting quality assessment tool, the PRISMA checklist and flow diagram, generated by a Shiny App, was used. As bibliometric visualization and construction tools for large datasets and networks, Dimensions and VOSviewer were leveraged. Search terms were "fintech" + "artificial intelligence", "big data management algorithms", and "Internet of Things", search period was June 2023, published research inspected was 2023, and selected sources were 35 out of 188.
Findings & value added: The growing volume of financial products and optimized operational performance of financial industries generated by fintech can provide firms with multifarious financing options quickly. Big data-driven fintech innovations are pivotal in banking and capital markets in relation to financial institution operational efficiency. Through datadriven technological and process innovation capabilities, AI system-based businesses can further automated services. (original abstract)
Rocznik
Tom
14
Numer
Strony
769--793
Opis fizyczny
Twórcy
  • Spiru Haret University, Romania
  • Spiru Haret University, Romania
  • Spiru Haret University, Romania
  • Spiru Haret University, Romania
  • Fundeni Clinical Institute, Romania
  • Grigore Alexandrescu Children's Emergency Hospital, Romania
Bibliografia
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Typ dokumentu
Bibliografia
Identyfikatory
Identyfikator YADDA
bwmeta1.element.ekon-element-000171677615

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