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Polyglot or Not? Measuring Multilingual Encyclopedic Knowledge in Foundation Models

Foundation models show varying accuracy in retrieving encyclopedic knowledge across languages and contexts, with Meta's LLaMA excelling but lacking in certain scripts and demographic contexts.

Year
2023
Venue
arXiv 2023
Authors
3
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arxiv.org/abs/2305.13675v2ARXIV-DEFAULT
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Abstract

In this work, we assess the ability of foundation models to recall encyclopedic knowledge across a wide range of linguistic contexts. To support this, we: 1) produce a 20-language dataset that contains 303k factual associations paired with counterfactuals, 2) evaluate 5 models in a multilingual test, and 3) benchmark a diverse set of 24 models in an English-only test. Meta's LLaMA achieves the highest scores in both multilingual and English-only evaluations. Yet, an analysis of LLaMA's errors reveals significant limitations in its ability to recall facts in languages other than English, plus difficulties related to the location and gender of fact subjects. Overall, our findings suggest that today's foundation models are far from polyglots.

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3