Transforming the Output of Generative Pre-trained Transformer: The Influence of the PGI Framework on Attention Dynamics
Aline Ioste

TL;DR
This paper introduces the PGI framework to enhance GPT models' application in business, significantly improving response accuracy and reducing human workload by integrating AI with decision-making processes.
Contribution
The novel PGI framework optimizes GPT's attention dynamics for practical business use, enabling better human-AI collaboration and operational efficiency.
Findings
93.81% accuracy in response validation
Effective reduction of human workload
Improved decision-making in business processes
Abstract
This paper presents a novel approach named Persona-Grouping-Intelligence (PGI), which has been crafted to tackle the challenges posed by GPT models when applied to real-world business issues. PGI leverages the inherent capabilities of the GPT model to comprehend intricate language structures and generate responses that are contextually relevant. The experiment occurred in a business scenario where human intelligence was being underutilized due to less optimized business processes. The primary objective of this approach is to leverage GPT models to reduce the workload on humans in tasks that are extensive, monotonous, and repetitive. Instead, the focus is redirected toward decision-making activities. Remarkably, the experiment yielded an accuracy rate of 93.81% in validating 4,000 responses generated by the model, underscoring the effectiveness of the PGI strategies. Effectively…
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Taxonomy
TopicsPersona Design and Applications · Information Systems Theories and Implementation · Human-Automation Interaction and Safety
MethodsAttention Is All You Need · Residual Connection · Discriminative Fine-Tuning · Cosine Annealing · Weight Decay · Refunds@Expedia|||How do I get a full refund from Expedia? · Linear Layer · Attention Dropout · Softmax · Dense Connections
