Araştırma Makalesi Yazımında GPT-3 Yapay Zeka Dil Modeli Değerlendirmesi

Author:

KATAR Oğuzhan1ORCID,ÖZKAN DilekORCID,-3 Gpt2ORCID,YILDIRIM Özal1ORCID,ACHARYA U Rajendra3ORCID

Affiliation:

1. FIRAT ÜNİVERSİTESİ

2. OpenAI

3. Ngee Ann Polytechnic

Abstract

Artificial intelligence (AI) has helped to obtain accurate, fast, robust results without any human errors.Hence, it has been used in various applications in our daily lives. The Turing test has been afundamental problem that AI systems aim to overcome. Recently developed various natural language problem (NLP) models have shown significant performances. AI language models, used intranslation, digital assistant, and sentiment analysis, have improved the quality of our lives. It canperform scans on thousands of documents in seconds and report them by establishing appropriatesentence structures. Generative pre-trained transformer (GPT)-3 is a popular model developedrecently has been used for many applications. Users of this model have obtained surprising results onvarious applications and shared them on various social media platforms. This study aims to evaluatethe performance of the GPT-3 model in writing an academic article. Hence, we chose the subject ofthe article as tools based on artificial intelligence in academic article writing. The organized querieson GPT-3 created the flow of this article. In this article, we have made an effort to highlight theadvantages and limitations of using GPT-3 for research paper writing. Authors feel that it can be usedas an adjunct tool while writing research papers.

Publisher

Firat Universitesi

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