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Main Authors: Ochieng, Millicent, Gumma, Varun, Sitaram, Sunayana, Wang, Jindong, Chaudhary, Vishrav, Ronen, Keshet, Bali, Kalika, O'Neill, Jacki
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.00343
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author Ochieng, Millicent
Gumma, Varun
Sitaram, Sunayana
Wang, Jindong
Chaudhary, Vishrav
Ronen, Keshet
Bali, Kalika
O'Neill, Jacki
author_facet Ochieng, Millicent
Gumma, Varun
Sitaram, Sunayana
Wang, Jindong
Chaudhary, Vishrav
Ronen, Keshet
Bali, Kalika
O'Neill, Jacki
contents The deployment of Large Language Models (LLMs) in real-world applications presents both opportunities and challenges, particularly in multilingual and code-mixed communication settings. This research evaluates the performance of seven leading LLMs in sentiment analysis on a dataset derived from multilingual and code-mixed WhatsApp chats, including Swahili, English and Sheng. Our evaluation includes both quantitative analysis using metrics like F1 score and qualitative assessment of LLMs' explanations for their predictions. We find that, while Mistral-7b and Mixtral-8x7b achieved high F1 scores, they and other LLMs such as GPT-3.5-Turbo, Llama-2-70b, and Gemma-7b struggled with understanding linguistic and contextual nuances, as well as lack of transparency in their decision-making process as observed from their explanations. In contrast, GPT-4 and GPT-4-Turbo excelled in grasping diverse linguistic inputs and managing various contextual information, demonstrating high consistency with human alignment and transparency in their decision-making process. The LLMs however, encountered difficulties in incorporating cultural nuance especially in non-English settings with GPT-4s doing so inconsistently. The findings emphasize the necessity of continuous improvement of LLMs to effectively tackle the challenges of culturally nuanced, low-resource real-world settings and the need for developing evaluation benchmarks for capturing these issues.
format Preprint
id arxiv_https___arxiv_org_abs_2406_00343
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Beyond Metrics: Evaluating LLMs' Effectiveness in Culturally Nuanced, Low-Resource Real-World Scenarios
Ochieng, Millicent
Gumma, Varun
Sitaram, Sunayana
Wang, Jindong
Chaudhary, Vishrav
Ronen, Keshet
Bali, Kalika
O'Neill, Jacki
Computation and Language
The deployment of Large Language Models (LLMs) in real-world applications presents both opportunities and challenges, particularly in multilingual and code-mixed communication settings. This research evaluates the performance of seven leading LLMs in sentiment analysis on a dataset derived from multilingual and code-mixed WhatsApp chats, including Swahili, English and Sheng. Our evaluation includes both quantitative analysis using metrics like F1 score and qualitative assessment of LLMs' explanations for their predictions. We find that, while Mistral-7b and Mixtral-8x7b achieved high F1 scores, they and other LLMs such as GPT-3.5-Turbo, Llama-2-70b, and Gemma-7b struggled with understanding linguistic and contextual nuances, as well as lack of transparency in their decision-making process as observed from their explanations. In contrast, GPT-4 and GPT-4-Turbo excelled in grasping diverse linguistic inputs and managing various contextual information, demonstrating high consistency with human alignment and transparency in their decision-making process. The LLMs however, encountered difficulties in incorporating cultural nuance especially in non-English settings with GPT-4s doing so inconsistently. The findings emphasize the necessity of continuous improvement of LLMs to effectively tackle the challenges of culturally nuanced, low-resource real-world settings and the need for developing evaluation benchmarks for capturing these issues.
title Beyond Metrics: Evaluating LLMs' Effectiveness in Culturally Nuanced, Low-Resource Real-World Scenarios
topic Computation and Language
url https://arxiv.org/abs/2406.00343