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Main Authors: Chong, Zan-Kai, Ohsaki, Hiroyuki, Ng, Bryan
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2403.01346
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author Chong, Zan-Kai
Ohsaki, Hiroyuki
Ng, Bryan
author_facet Chong, Zan-Kai
Ohsaki, Hiroyuki
Ng, Bryan
contents Active learning is a learning strategy whereby the machine learning algorithm actively identifies and labels data points to optimize its learning. This strategy is particularly effective in domains where an abundance of unlabeled data exists, but the cost of labeling these data points is prohibitively expensive. In this paper, we consider cases of binary classification, where acquiring a positive instance incurs a significantly higher cost compared to that of negative instances. For example, in the financial industry, such as in money-lending businesses, a defaulted loan constitutes a positive event leading to substantial financial loss. To address this issue, we propose a shifted normal distribution sampling function that samples from a wider range than typical uncertainty sampling. Our simulation underscores that our proposed sampling function limits both noisy and positive label selection, delivering between 20% and 32% improved cost efficiency over different test datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2403_01346
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Improve Cost Efficiency of Active Learning over Noisy Dataset
Chong, Zan-Kai
Ohsaki, Hiroyuki
Ng, Bryan
Machine Learning
Active learning is a learning strategy whereby the machine learning algorithm actively identifies and labels data points to optimize its learning. This strategy is particularly effective in domains where an abundance of unlabeled data exists, but the cost of labeling these data points is prohibitively expensive. In this paper, we consider cases of binary classification, where acquiring a positive instance incurs a significantly higher cost compared to that of negative instances. For example, in the financial industry, such as in money-lending businesses, a defaulted loan constitutes a positive event leading to substantial financial loss. To address this issue, we propose a shifted normal distribution sampling function that samples from a wider range than typical uncertainty sampling. Our simulation underscores that our proposed sampling function limits both noisy and positive label selection, delivering between 20% and 32% improved cost efficiency over different test datasets.
title Improve Cost Efficiency of Active Learning over Noisy Dataset
topic Machine Learning
url https://arxiv.org/abs/2403.01346