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ChatGPT: Jack of all trades, master of none

About

OpenAI has released the Chat Generative Pre-trained Transformer (ChatGPT) and revolutionized the approach in artificial intelligence to human-model interaction. Several publications on ChatGPT evaluation test its effectiveness on well-known natural language processing (NLP) tasks. However, the existing studies are mostly non-automated and tested on a very limited scale. In this work, we examined ChatGPT's capabilities on 25 diverse analytical NLP tasks, most of them subjective even to humans, such as sentiment analysis, emotion recognition, offensiveness, and stance detection. In contrast, the other tasks require more objective reasoning like word sense disambiguation, linguistic acceptability, and question answering. We also evaluated GPT-4 model on five selected subsets of NLP tasks. We automated ChatGPT and GPT-4 prompting process and analyzed more than 49k responses. Our comparison of its results with available State-of-the-Art (SOTA) solutions showed that the average loss in quality of the ChatGPT model was about 25% for zero-shot and few-shot evaluation. For GPT-4 model, a loss for semantic tasks is significantly lower than for ChatGPT. We showed that the more difficult the task (lower SOTA performance), the higher the ChatGPT loss. It especially refers to pragmatic NLP problems like emotion recognition. We also tested the ability to personalize ChatGPT responses for selected subjective tasks via Random Contextual Few-Shot Personalization, and we obtained significantly better user-based predictions. Additional qualitative analysis revealed a ChatGPT bias, most likely due to the rules imposed on human trainers by OpenAI. Our results provide the basis for a fundamental discussion of whether the high quality of recent predictive NLP models can indicate a tool's usefulness to society and how the learning and validation procedures for such systems should be established.

Jan Koco\'n, Igor Cichecki, Oliwier Kaszyca, Mateusz Kochanek, Dominika Szyd{\l}o, Joanna Baran, Julita Bielaniewicz, Marcin Gruza, Arkadiusz Janz, Kamil Kanclerz, Anna Koco\'n, Bart{\l}omiej Koptyra, Wiktoria Mieleszczenko-Kowszewicz, Piotr Mi{\l}kowski, Marcin Oleksy, Maciej Piasecki, {\L}ukasz Radli\'nski, Konrad Wojtasik, Stanis{\l}aw Wo\'zniak, Przemys{\l}aw Kazienko• 2023

Related benchmarks

TaskDatasetResultRank
Mathematical ReasoningMathQA
Accuracy71.4
95
Natural Language InferenceWNLI
Accuracy81.7
40
Emotion RecognitionGoEmotions
F1 Macro0.256
5
Emotion RecognitionPolEmo2
F1 Macro44.1
5
Recognizing Textual EntailmentRTE
F1 Macro88.1
5
Aggression DetectionAggression
F1 Macro69.1
3
Sentiment AnalysisTweetSent
F1 Macro63.32
3
Unhealthy Comment DetectionUnhealthy
F1 Macro45.21
3
Sarcasm DetectionSarcasm
F1 Macro49.88
3
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