Meta analiza rešitev za vrednotenje podjetij – so metode, ki temeljijo na umetni inteligenci, boljše?

Avtorji

  • Aljaž Herman Ekonomsko-poslovna fakulteta Univerze v Mariboru, Slovenija
  • Damijan Mumel Ekonomsko-poslovna fakulteta Univerze v Mariboru, Slovenija
  • Timotej Jagrič Ekonomsko-poslovna fakulteta Univerze v Mariboru, Slovenija

DOI:

https://doi.org/10.32015/JIBM.2024.16.2.6

Ključne besede:

vrednotenje podjetij, tradicionalne in sodobne metode vrednotenja, strojno učenje, nevronske mreže, umetna inteligenca

Povzetek

Namen članka – članek obravnava izziv natančnega ocenjevanja vrednosti podjetja v današnjem dinamičnem okolju ter raziskuje omejitve tradicionalnih metod vrednotenja in možnosti sodobnih, tehnološko zasnovanih pristopov.

Metodologija raziskave – v študiji so za pregled različnih tehnik vrednotenja podjetij uporabljene kvalitativne raziskovalne metode, vključno z analizo vsebine, deduktivnim sklepanjem in primerjalno analizo.

Ugotovitve – raziskava ugotavlja, da so tradicionalne metode, kot sta diskontirani denarni tok in relativno vrednotenje, zastarele in ne zajemajo vseh dejavnikov vrednosti. Sodobni pristopi, kot so vrednotenje na podlagi simulacij, strojno učenje in nevronske mreže, združujejo tradicionalne metode z naprednimi tehnikami. Te metodologije uporabljajo obsežne nabore podatkov in izpopolnjene algoritme, kar povečuje natančnost napovedovanja in razumevanje tržne dinamike. Zlasti nevronske mreže so odlične pri analiziranju zapletenih vzorcev in prilagajanju spremembam na trgu. Vendar nobena metoda ne more zajeti vseh nians, kar zahteva različne pristope in priznavanje subjektivne narave vrednotenja.

Praktični doprinos – ugotovitve kažejo, da je mogoče z uporabo naprednih metodologij izboljšati vrednotenje podjetij, kar vodi k boljšemu sprejemanju odločitev ter boljšemu razumevanju tržne dinamike in notranje vrednosti.

Izvirnost/vrednost – ta študija edinstveno preučuje prehod s tradicionalnih na sodobne metode vrednotenja, pri čemer poudarja boljšo učinkovitost nevronskih mrež in potrebo po večplastnem pristopu k vrednotenju podjetij.

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Objavljeno

2024-11-28

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Kako citirati

Herman, A., Mumel, D., & Jagrič, T. (2024). Meta analiza rešitev za vrednotenje podjetij – so metode, ki temeljijo na umetni inteligenci, boljše?. Mednarodno Inovativno Poslovanje = Journal of Innovative Business and Management, 16(2), 1-16. https://doi.org/10.32015/JIBM.2024.16.2.6

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