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Autori principali: Fu, Tairan, Ferrando, Raquel, Conde, Javier, Arriaga, Carlos, Reviriego, Pedro
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2412.18626
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author Fu, Tairan
Ferrando, Raquel
Conde, Javier
Arriaga, Carlos
Reviriego, Pedro
author_facet Fu, Tairan
Ferrando, Raquel
Conde, Javier
Arriaga, Carlos
Reviriego, Pedro
contents Large Language Models (LLMs) have achieved unprecedented performance on many complex tasks, being able, for example, to answer questions on almost any topic. However, they struggle with other simple tasks, such as counting the occurrences of letters in a word, as illustrated by the inability of many LLMs to count the number of "r" letters in "strawberry". Several works have studied this problem and linked it to the tokenization used by LLMs, to the intrinsic limitations of the attention mechanism, or to the lack of character-level training data. In this paper, we conduct an experimental study to evaluate the relations between the LLM errors when counting letters with 1) the frequency of the word and its components in the training dataset and 2) the complexity of the counting operation. We present a comprehensive analysis of the errors of LLMs when counting letter occurrences by evaluating a representative group of models over a large number of words. The results show a number of consistent trends in the models evaluated: 1) models are capable of recognizing the letters but not counting them; 2) the frequency of the word and tokens in the word does not have a significant impact on the LLM errors; 3) there is a positive correlation of letter frequency with errors, more frequent letters tend to have more counting errors, 4) the errors show a strong correlation with the number of letters or tokens in a word and 5) the strongest correlation occurs with the number of letters with counts larger than one, with most models being unable to correctly count words in which letters appear more than twice.
format Preprint
id arxiv_https___arxiv_org_abs_2412_18626
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Why Do Large Language Models (LLMs) Struggle to Count Letters?
Fu, Tairan
Ferrando, Raquel
Conde, Javier
Arriaga, Carlos
Reviriego, Pedro
Computation and Language
Large Language Models (LLMs) have achieved unprecedented performance on many complex tasks, being able, for example, to answer questions on almost any topic. However, they struggle with other simple tasks, such as counting the occurrences of letters in a word, as illustrated by the inability of many LLMs to count the number of "r" letters in "strawberry". Several works have studied this problem and linked it to the tokenization used by LLMs, to the intrinsic limitations of the attention mechanism, or to the lack of character-level training data. In this paper, we conduct an experimental study to evaluate the relations between the LLM errors when counting letters with 1) the frequency of the word and its components in the training dataset and 2) the complexity of the counting operation. We present a comprehensive analysis of the errors of LLMs when counting letter occurrences by evaluating a representative group of models over a large number of words. The results show a number of consistent trends in the models evaluated: 1) models are capable of recognizing the letters but not counting them; 2) the frequency of the word and tokens in the word does not have a significant impact on the LLM errors; 3) there is a positive correlation of letter frequency with errors, more frequent letters tend to have more counting errors, 4) the errors show a strong correlation with the number of letters or tokens in a word and 5) the strongest correlation occurs with the number of letters with counts larger than one, with most models being unable to correctly count words in which letters appear more than twice.
title Why Do Large Language Models (LLMs) Struggle to Count Letters?
topic Computation and Language
url https://arxiv.org/abs/2412.18626