The impact of widely used algorithms of large language models on information retrieval and the associated potential risks
DOI:
https://doi.org/10.15503/emet2023.93.101Keywords:
Artificial intelligence, Learning, Psychology, ManipulationAbstract
Thesis. The aim of this work is to perform an analysis concerning the subject of arti- ficial intelligence integration and its application in modern knowledge acquisition. The article will be an overview of scientific research and papers to raise a discussion of the ad- vantages and potential hazards associated with the widespread implementation of large language models.
Concept. The main part of the article will focus on describing the AI enhanced tools available on the market and common ways of utilising them. This knowledge will be jux- taposed with psychological research on human consciousness in the context of decision- making, creativity, and held beliefs to list potential threads related.
Results. The analysis of tools that have recently been enhanced with algorithms un- equivocally indicates the dominance of the sector providing informational and creative support. These tools possess a measurably high level of reliability among the public, re- sulting in a reduced number of verification actions. A review of existing literature and research on human psychology shows a very strong correlation between the influence of previous social authorities on decision-making behaviour and an uncritical approach to information obtained through AI. Studies have shown that access to these tools, without proper controlling actions of results, exposes users to bias, manipulation, or susceptibility to marketing activities. Alternatively, with proper and rational use of these implemented algorithms, humans are able to obtain extraordinarily precise and knowledge-based sup- port in decision-making. Similar polarisations of results have been observed in the con- text of creativity, innovation, and inquisitiveness.
Originality. The article addresses topics that relate to the psychological nature of hu- mans in the context of new and expanded AI augmented tools. The results of the explora- tory study clearly indicate that programmes supported by algorithms show potential in terms of both scientific and social development. Unfortunately, they also present many potential dangers for both, which, discussed in the foundation, provide the groundwork for more in-depth research.
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References
Ashoori, M., & Weisz, J. D. (2019). In AI we trust? Factors that influence trustworthiness of AI-infused decision-making processes.
Cherniak, K. (2024). Chatbot statistics: What businesses need to know about digital assistants. Master of code global.
Kaddour, J., Harris, J., Mozes, M., Bradley, H., Raileanu, R., & McHardy, R. (2023). Chal- lenges and applications of large language models.
Martin, H.-J. (1994). The History and Power of Writing.
Morrison, A. B., Conway, A. R. A., & Chein, J. M. (2014). Primacy and recency effects as
indices of the focus of attention. Front Hum Neurosci.
owen, J. M. (2007). The scientific article in the age of digitization.
Reddy, S., Allan, S., Coghlan, S., & Cooper, P. (2019). A governance model for the application
of AI in health care.
Rong, Q., Lian, Q., & Tang, T. (2022). Research on the influence of AI and VR technology for
students’ concentration and creativity.
Rotter, J. B. (1967). A new scale for the measurement of interpersonal trust. Journal of
Personality, 35(4), 651–665.
Simpson, J. A., & Vieth, G. (2022). Trust and psychology. In the neurobiology of trust (chapter
.
Suzuki, M., & Yamamoto, Y. (2021). Characterizing the influence of confirmation bias on
web search behavior. Frontiers in psychology.
Wagner, P. (2020). Cookies: Privacy risks, attacks, and recommendations.
Wang, D., Weisz, J. D., Muller, M., Ram, P., Geyer, W., Dugan, C., Tausczik, Y., Samulow-
itz, H., & Gray, A. (2019). Human AI collaboration in data science: Exploring data scientists’
perceptions of automated AI. Computer supported cooperative work.
Xu, Y., Liu, X., Cao, X., Huang, C., Liu, e., Qian, S., ... & Zhang, J. (2021). Artificial intel-
ligence: A powerful paradigm for scientific research.
Zawacki-Richter, o., Marín, V. I., Bond, M., & Gouverneur, F. (2019). Systematic review of
research on artificial intelligence applications in higher education – where are the educators?
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Copyright (c) 2024 Jakub Lichosik, Iwona Zborowska, Anna Dąbek, Angelika Dudek
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