Litcius/Paper detail

Journey of Hallucination-minimized Generative AI Solutions for Financial Decision Makers

Sohini Roychowdhury

202416 citationsDOI

Abstract

Generative AI has significantly reduced the entry barrier to the domain of AI owing to the ease of use and core capabilities of automation, translation, and intelligent actions in our day to day lives. Currently, Large language models (LLMs) that power such chatbots are being utilized primarily for their automation capabilities on a limited scope. One major limitation of the currently evolving family of LLMs is hallucinations, wherein inaccurate responses are reported as factual. Hallucinations are primarily caused by biased training data, ambiguous prompts and inaccurate LLM parameters, and they majorly occur while combining mathematical facts with language-based context. In this work we present the three major stages in the journey of designing hallucination-minimized LLM-based solutions that are specialized for the decision makers of the financial domain, namely: prototyping, scaling and LLM evolution using human feedback. These three stages and the novel data to answer generation modules presented in this work are necessary to ensure that the Generative AI products are reliable and high-quality to aid key decision-making processes.

Topics & Concepts

Computer scienceGenerative grammarContext (archaeology)AutomationDomain (mathematical analysis)Scope (computer science)Key (lock)Artificial intelligenceGenerative modelAction (physics)Data scienceHuman–computer interactionNatural language processingComputer securityEngineeringProgramming languageQuantum mechanicsBiologyMathematical analysisPaleontologyMathematicsMechanical engineeringPhysicsFerroelectric and Negative Capacitance DevicesTopic Modeling