Non-binary evaluation of next-basket food recommendation
Next-basket recommendation (NBR) is a recommendation task that predicts a basket or a set of items a user is likely to adopt next based on his/her history of basket adoption sequences. It enables a wide range of novel applications and services from predicting next basket of items for grocery shoppin...
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sg-smu-ink.sis_research-89032023-07-14T06:04:03Z Non-binary evaluation of next-basket food recommendation LIU, Yue ACHANANUPARP, Palakorn LIM, Ee-peng Next-basket recommendation (NBR) is a recommendation task that predicts a basket or a set of items a user is likely to adopt next based on his/her history of basket adoption sequences. It enables a wide range of novel applications and services from predicting next basket of items for grocery shopping to recommending food items a user is likely to consume together in the next meal. Even though much progress has been made in the algorithmic NBR research over the years, little research has been done to broaden knowledge about the evaluation of NBR methods, which is largely based on the offline evaluation experiments and binary relevance paradigm. Specifically, we argue that recommended baskets which are more similar to ground truth baskets are better recommendations than those that share little resemblance to the ground truth, and therefore, they should be granted some partial credits. Based on this notion of non-binary relevance assessment, we propose new evaluation metrics for NBR by adapting and extending similarity metrics from natural language processing (NLP) and text classification research. To validate the proposed metrics, we conducted two user studies on the next-meal food recommendation using numerous state-of-the-art NBR methods in both online and offline evaluation settings. Our findings show that the offline performance assessment based on the proposed non-binary evaluation metrics is more representative of the online evaluation performance than that of the standard evaluation metrics. 2023-06-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/7900 info:doi/10.1007/s11257-023-09369-8 https://ink.library.smu.edu.sg/context/sis_research/article/8903/viewcontent/Non_binary_evaln_next_basket_sv_cc_by.pdf http://creativecommons.org/licenses/by/3.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Next-basket recommendation Food recommendation Non-binary relevance Evaluation metrics User study Databases and Information Systems Food Science Numerical Analysis and Scientific Computing |
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Next-basket recommendation Food recommendation Non-binary relevance Evaluation metrics User study Databases and Information Systems Food Science Numerical Analysis and Scientific Computing LIU, Yue ACHANANUPARP, Palakorn LIM, Ee-peng Non-binary evaluation of next-basket food recommendation |
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Next-basket recommendation (NBR) is a recommendation task that predicts a basket or a set of items a user is likely to adopt next based on his/her history of basket adoption sequences. It enables a wide range of novel applications and services from predicting next basket of items for grocery shopping to recommending food items a user is likely to consume together in the next meal. Even though much progress has been made in the algorithmic NBR research over the years, little research has been done to broaden knowledge about the evaluation of NBR methods, which is largely based on the offline evaluation experiments and binary relevance paradigm. Specifically, we argue that recommended baskets which are more similar to ground truth baskets are better recommendations than those that share little resemblance to the ground truth, and therefore, they should be granted some partial credits. Based on this notion of non-binary relevance assessment, we propose new evaluation metrics for NBR by adapting and extending similarity metrics from natural language processing (NLP) and text classification research. To validate the proposed metrics, we conducted two user studies on the next-meal food recommendation using numerous state-of-the-art NBR methods in both online and offline evaluation settings. Our findings show that the offline performance assessment based on the proposed non-binary evaluation metrics is more representative of the online evaluation performance than that of the standard evaluation metrics. |
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text |
author |
LIU, Yue ACHANANUPARP, Palakorn LIM, Ee-peng |
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LIU, Yue ACHANANUPARP, Palakorn LIM, Ee-peng |
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LIU, Yue |
title |
Non-binary evaluation of next-basket food recommendation |
title_short |
Non-binary evaluation of next-basket food recommendation |
title_full |
Non-binary evaluation of next-basket food recommendation |
title_fullStr |
Non-binary evaluation of next-basket food recommendation |
title_full_unstemmed |
Non-binary evaluation of next-basket food recommendation |
title_sort |
non-binary evaluation of next-basket food recommendation |
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Institutional Knowledge at Singapore Management University |
publishDate |
2023 |
url |
https://ink.library.smu.edu.sg/sis_research/7900 https://ink.library.smu.edu.sg/context/sis_research/article/8903/viewcontent/Non_binary_evaln_next_basket_sv_cc_by.pdf |
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