Turker Tuncer, Sengul Dogan, Mehmet Baygin, Prabal Datta Barua, Abdul Hafeez-Baig, Ru-San Tan, Subrata Chakraborty, U. Rajendra Acharya
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Solving the multiplication problem of a large language model system using a graph-based method
The generative pre-trained transformer (GPT)-based chatbot software ChatGPT
possesses excellent natural language processing capabilities but is inadequate
for solving arithmetic problems, especially multiplication. Its GPT structure
uses a computational graph for multiplication, which has limited accuracy
beyond simple multiplication operations. We developed a graph-based
multiplication algorithm that emulated human-like numerical operations by
incorporating a 10k operator, where k represents the maximum power to base 10
of the larger of two input numbers. Our proposed algorithm attained 100%
accuracy for 1,000,000 large number multiplication tasks, effectively solving
the multiplication challenge of GPT-based and other large language models. Our
work highlights the importance of blending simple human insights into the
design of artificial intelligence algorithms. Keywords: Graph-based
multiplication; ChatGPT; Multiplication problem