General Words Representation Method for Modern Language Model

This paper proposes a new word representation method emphasizes general words over specific words. The main motivation for developing this method is to address the weighting bias in modern Language Models (LMs). Based on the Transformer architecture, contemporary LMs tend to naturally emphasize spec...

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Main Authors: Abbas Saliimi, Lokman, Mohamed Ariff, Ameedeen, Ngahzaifa, Ab. Ghani
Format: Article
Language:English
Published: UTeM 2023
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Online Access:http://umpir.ump.edu.my/id/eprint/38294/1/6241-Article%20Text-18137-1-10-20230324.pdf
http://umpir.ump.edu.my/id/eprint/38294/
https://jtec.utem.edu.my/jtec/article/view/6241
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spelling my.ump.umpir.382942023-08-30T00:57:52Z http://umpir.ump.edu.my/id/eprint/38294/ General Words Representation Method for Modern Language Model Abbas Saliimi, Lokman Mohamed Ariff, Ameedeen Ngahzaifa, Ab. Ghani QA75 Electronic computers. Computer science QA76 Computer software This paper proposes a new word representation method emphasizes general words over specific words. The main motivation for developing this method is to address the weighting bias in modern Language Models (LMs). Based on the Transformer architecture, contemporary LMs tend to naturally emphasize specific words through the Attention mechanism to capture the key semantic concepts in a given text. As a result, general words, including question words are often neglected by LMs, leading to a biased word significance representation (where specific words have heightened weight, while general words have reduced weights). This paper presents a case study, where general words' semantics are as important as specific words' semantics, specifically in the abstractive answer area within the Natural Language Processing (NLP) Question Answering (QA) domain. Based on the selected case study datasets, two experiments are designed to test the hypothesis that "the significance of general words is highly correlated with its Term Frequency (TF) percentage across various document scales”. The results from these experiments support this hypothesis, justifying the proposed intention of the method to emphasize general words over specific words in any corpus size. The output of the proposed method is a list of token (word)- weight pairs. These generated weights can be used to leverage the significance of general words over specific words in suitable NLP tasks. An example of such task is the question classification process (classifying question text whether it expects factual or abstractive answer). In this context, general words, particularly the question words are more semantically significant than the specific words. This is because the same specific words in different questions might require different answers based on their question words (e.g. "How many items are on sale?" and "What items are on sale?" questions). By employing the general weight values produced by this method, the weightage of question and specific words can be heightened, making it easier for the classification system to differentiate between these questions. Additionally, the token (word)-weight pair list is made available online at https://www.kaggle.com/datasets/saliimiabbas/genwords-weight. UTeM 2023-03-29 Article PeerReviewed pdf en http://umpir.ump.edu.my/id/eprint/38294/1/6241-Article%20Text-18137-1-10-20230324.pdf Abbas Saliimi, Lokman and Mohamed Ariff, Ameedeen and Ngahzaifa, Ab. Ghani (2023) General Words Representation Method for Modern Language Model. Journal of Telecommunication, Electronic and Computer Engineering, 15 (1). pp. 1-5. ISSN 2180-1843 (Print); 2289-8131 (Online). (Unpublished) (Unpublished) https://jtec.utem.edu.my/jtec/article/view/6241
institution Universiti Malaysia Pahang
building UMP Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaysia Pahang
content_source UMP Institutional Repository
url_provider http://umpir.ump.edu.my/
language English
topic QA75 Electronic computers. Computer science
QA76 Computer software
spellingShingle QA75 Electronic computers. Computer science
QA76 Computer software
Abbas Saliimi, Lokman
Mohamed Ariff, Ameedeen
Ngahzaifa, Ab. Ghani
General Words Representation Method for Modern Language Model
description This paper proposes a new word representation method emphasizes general words over specific words. The main motivation for developing this method is to address the weighting bias in modern Language Models (LMs). Based on the Transformer architecture, contemporary LMs tend to naturally emphasize specific words through the Attention mechanism to capture the key semantic concepts in a given text. As a result, general words, including question words are often neglected by LMs, leading to a biased word significance representation (where specific words have heightened weight, while general words have reduced weights). This paper presents a case study, where general words' semantics are as important as specific words' semantics, specifically in the abstractive answer area within the Natural Language Processing (NLP) Question Answering (QA) domain. Based on the selected case study datasets, two experiments are designed to test the hypothesis that "the significance of general words is highly correlated with its Term Frequency (TF) percentage across various document scales”. The results from these experiments support this hypothesis, justifying the proposed intention of the method to emphasize general words over specific words in any corpus size. The output of the proposed method is a list of token (word)- weight pairs. These generated weights can be used to leverage the significance of general words over specific words in suitable NLP tasks. An example of such task is the question classification process (classifying question text whether it expects factual or abstractive answer). In this context, general words, particularly the question words are more semantically significant than the specific words. This is because the same specific words in different questions might require different answers based on their question words (e.g. "How many items are on sale?" and "What items are on sale?" questions). By employing the general weight values produced by this method, the weightage of question and specific words can be heightened, making it easier for the classification system to differentiate between these questions. Additionally, the token (word)-weight pair list is made available online at https://www.kaggle.com/datasets/saliimiabbas/genwords-weight.
format Article
author Abbas Saliimi, Lokman
Mohamed Ariff, Ameedeen
Ngahzaifa, Ab. Ghani
author_facet Abbas Saliimi, Lokman
Mohamed Ariff, Ameedeen
Ngahzaifa, Ab. Ghani
author_sort Abbas Saliimi, Lokman
title General Words Representation Method for Modern Language Model
title_short General Words Representation Method for Modern Language Model
title_full General Words Representation Method for Modern Language Model
title_fullStr General Words Representation Method for Modern Language Model
title_full_unstemmed General Words Representation Method for Modern Language Model
title_sort general words representation method for modern language model
publisher UTeM
publishDate 2023
url http://umpir.ump.edu.my/id/eprint/38294/1/6241-Article%20Text-18137-1-10-20230324.pdf
http://umpir.ump.edu.my/id/eprint/38294/
https://jtec.utem.edu.my/jtec/article/view/6241
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