Dataset versus reality: understanding model performance from the perspective of information need

Deep learning technologies have brought us many models that outperform human beings on a few benchmarks. An interesting question is: can these models well solve real-world problems with similar settings (e.g., identical input/output) to the benchmark datasets? We argue that a model is trained to ans...

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Main Authors: Yu, Mengying, Sun, Aixin
Other Authors: School of Computer Science and Engineering
Format: Article
Language:English
Published: 2023
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Online Access:https://hdl.handle.net/10356/171253
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1712532023-10-18T01:30:24Z Dataset versus reality: understanding model performance from the perspective of information need Yu, Mengying Sun, Aixin School of Computer Science and Engineering S-Lab Engineering::Computer science and engineering Model Deep Learning Deep learning technologies have brought us many models that outperform human beings on a few benchmarks. An interesting question is: can these models well solve real-world problems with similar settings (e.g., identical input/output) to the benchmark datasets? We argue that a model is trained to answer the same information need in a similar context (e.g., the information available), for which the training dataset is created. The trained model may be used to solve real-world problems for a similar information need in a similar context. However, information need is independent of the format of dataset input/output. Although some datasets may share high structural similarities, they may represent different research tasks aiming for answering different information needs. Examples are question–answer pairs for the question answering (QA) task, and image-caption pairs for the image captioning (IC) task. In this paper, we use the QA task and IC task as two case studies and compare their widely used benchmark datasets. From the perspective of information need in the context of information retrieval, we show the differences in the dataset creation processes and the differences in morphosyntactic properties between datasets. The differences in these datasets can be attributed to the different information needs and contexts of the specific research tasks. We encourage all researchers to consider the information need perspective of a research task when selecting the appropriate datasets to train a model. Likewise, while creating a dataset, researchers may also incorporate the information need perspective as a factor to determine the degree to which the dataset accurately reflects the real-world problem or the research task they intend to tackle. Agency for Science, Technology and Research (A*STAR) This work was funded by Industry Alignment Fund-Industry Collaboration Projects, Grant/Award Number: RIE2020 IAF-ICP. 2023-10-18T01:30:24Z 2023-10-18T01:30:24Z 2023 Journal Article Yu, M. & Sun, A. (2023). Dataset versus reality: understanding model performance from the perspective of information need. Journal of the Association for Information Science and Technology, 74(11), 1293-1306. https://dx.doi.org/10.1002/asi.24825 2330-1635 https://hdl.handle.net/10356/171253 10.1002/asi.24825 2-s2.0-85168382921 11 74 1293 1306 en RIE2020 IAF-ICP Journal of the Association for Information Science and Technology © 2023 Association for Information Science and Technology. All rights reserved.
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Computer science and engineering
Model
Deep Learning
spellingShingle Engineering::Computer science and engineering
Model
Deep Learning
Yu, Mengying
Sun, Aixin
Dataset versus reality: understanding model performance from the perspective of information need
description Deep learning technologies have brought us many models that outperform human beings on a few benchmarks. An interesting question is: can these models well solve real-world problems with similar settings (e.g., identical input/output) to the benchmark datasets? We argue that a model is trained to answer the same information need in a similar context (e.g., the information available), for which the training dataset is created. The trained model may be used to solve real-world problems for a similar information need in a similar context. However, information need is independent of the format of dataset input/output. Although some datasets may share high structural similarities, they may represent different research tasks aiming for answering different information needs. Examples are question–answer pairs for the question answering (QA) task, and image-caption pairs for the image captioning (IC) task. In this paper, we use the QA task and IC task as two case studies and compare their widely used benchmark datasets. From the perspective of information need in the context of information retrieval, we show the differences in the dataset creation processes and the differences in morphosyntactic properties between datasets. The differences in these datasets can be attributed to the different information needs and contexts of the specific research tasks. We encourage all researchers to consider the information need perspective of a research task when selecting the appropriate datasets to train a model. Likewise, while creating a dataset, researchers may also incorporate the information need perspective as a factor to determine the degree to which the dataset accurately reflects the real-world problem or the research task they intend to tackle.
author2 School of Computer Science and Engineering
author_facet School of Computer Science and Engineering
Yu, Mengying
Sun, Aixin
format Article
author Yu, Mengying
Sun, Aixin
author_sort Yu, Mengying
title Dataset versus reality: understanding model performance from the perspective of information need
title_short Dataset versus reality: understanding model performance from the perspective of information need
title_full Dataset versus reality: understanding model performance from the perspective of information need
title_fullStr Dataset versus reality: understanding model performance from the perspective of information need
title_full_unstemmed Dataset versus reality: understanding model performance from the perspective of information need
title_sort dataset versus reality: understanding model performance from the perspective of information need
publishDate 2023
url https://hdl.handle.net/10356/171253
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