A methodology for analyzing financial needs hierarchy from social discussions using LLM
Abhishek Jangra, Sachin Thukral, Arnab Chatterjee, Jayasree Raveendran

TL;DR
This paper uses large language models to analyze social media discussions, revealing a hierarchical structure of financial needs from immediate essentials to long-term goals, offering a scalable alternative to traditional surveys.
Contribution
It introduces a novel methodology employing LLMs to extract and analyze financial needs hierarchies from social media data, advancing understanding of financial behavior.
Findings
Confirmed the hierarchical organization of financial needs in social discussions
Demonstrated the feasibility of using LLMs for large-scale financial needs analysis
Provided insights into themes of online financial conversations
Abstract
This study examines the hierarchical structure of financial needs as articulated in social media discourse, employing generative AI techniques to analyze large-scale textual data. While human needs encompass a broad spectrum from fundamental survival to psychological fulfillment financial needs are particularly critical, influencing both individual well-being and day-to-day decision-making. Our research advances the understanding of financial behavior by utilizing large language models (LLMs) to extract and analyze expressions of financial needs from social media posts. We hypothesize that financial needs are organized hierarchically, progressing from short-term essentials to long-term aspirations, consistent with theoretical frameworks established in the behavioral sciences. Through computational analysis, we demonstrate the feasibility of identifying these needs and validate the…
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Taxonomy
TopicsMental Health via Writing · Sentiment Analysis and Opinion Mining · Stock Market Forecasting Methods
