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Main Authors: Gulati, Akshay, Singhania, Kanha, Banga, Tushar, Arora, Parth, Verma, Anshul, Singh, Vaibhav Kumar, Digra, Agyapal, Bisht, Jayant Singh, Sharma, Danish, Singla, Varun, Garg, Shubh
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.08704
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author Gulati, Akshay
Singhania, Kanha
Banga, Tushar
Arora, Parth
Verma, Anshul
Singh, Vaibhav Kumar
Digra, Agyapal
Bisht, Jayant Singh
Sharma, Danish
Singla, Varun
Garg, Shubh
author_facet Gulati, Akshay
Singhania, Kanha
Banga, Tushar
Arora, Parth
Verma, Anshul
Singh, Vaibhav Kumar
Digra, Agyapal
Bisht, Jayant Singh
Sharma, Danish
Singla, Varun
Garg, Shubh
contents Large language models are increasingly used for financial analysis and investment research, yet systematic evaluation of their financial reasoning capabilities remains limited. In this work, we introduce the AI Financial Intelligence Benchmark (AFIB), a multi-dimensional evaluation framework designed to assess financial analysis capabilities across five dimensions: factual accuracy, analytical completeness, data recency, model consistency, and failure patterns. We evaluate five AI systems: GPT, Gemini, Perplexity, Claude, and SuperInvesting, using a dataset of 95+ structured financial analysis questions derived from real-world equity research tasks. The results reveal substantial differences in performance across models. Within this benchmark setting, SuperInvesting achieves the highest aggregate performance, with an average factual accuracy score of 8.96/10 and the highest completeness score of 56.65/70, while also demonstrating the lowest hallucination rate among evaluated systems. Retrieval-oriented systems such as Perplexity perform strongly on data recency tasks due to live information access but exhibit weaker analytical synthesis and consistency. Overall, the results highlight that financial intelligence in large language models is inherently multi-dimensional, and systems that combine structured financial data access with analytical reasoning capabilities provide the most reliable performance for complex investment research workflows.
format Preprint
id arxiv_https___arxiv_org_abs_2603_08704
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Evaluating Financial Intelligence in Large Language Models: Benchmarking SuperInvesting AI with LLM Engines
Gulati, Akshay
Singhania, Kanha
Banga, Tushar
Arora, Parth
Verma, Anshul
Singh, Vaibhav Kumar
Digra, Agyapal
Bisht, Jayant Singh
Sharma, Danish
Singla, Varun
Garg, Shubh
Artificial Intelligence
Large language models are increasingly used for financial analysis and investment research, yet systematic evaluation of their financial reasoning capabilities remains limited. In this work, we introduce the AI Financial Intelligence Benchmark (AFIB), a multi-dimensional evaluation framework designed to assess financial analysis capabilities across five dimensions: factual accuracy, analytical completeness, data recency, model consistency, and failure patterns. We evaluate five AI systems: GPT, Gemini, Perplexity, Claude, and SuperInvesting, using a dataset of 95+ structured financial analysis questions derived from real-world equity research tasks. The results reveal substantial differences in performance across models. Within this benchmark setting, SuperInvesting achieves the highest aggregate performance, with an average factual accuracy score of 8.96/10 and the highest completeness score of 56.65/70, while also demonstrating the lowest hallucination rate among evaluated systems. Retrieval-oriented systems such as Perplexity perform strongly on data recency tasks due to live information access but exhibit weaker analytical synthesis and consistency. Overall, the results highlight that financial intelligence in large language models is inherently multi-dimensional, and systems that combine structured financial data access with analytical reasoning capabilities provide the most reliable performance for complex investment research workflows.
title Evaluating Financial Intelligence in Large Language Models: Benchmarking SuperInvesting AI with LLM Engines
topic Artificial Intelligence
url https://arxiv.org/abs/2603.08704