二元分类
人工智能
计算机科学
集合(抽象数据类型)
二进制数
人工神经网络
多元统计
数据集
任务(项目管理)
机器学习
训练集
班级(哲学)
模式识别(心理学)
深度学习
系列(地层学)
试验装置
数据挖掘
支持向量机
数学
古生物学
经济
算术
管理
程序设计语言
生物
出处
期刊:IEEE Access
[Institute of Electrical and Electronics Engineers]
日期:2023-01-01
卷期号:11: 20877-20884
被引量:1
标识
DOI:10.1109/access.2023.3251194
摘要
Positive and unlabelled (PU) learning for multi-variate time series classification refers to build a binary classification model when only a small set of positive and a large set of unlabelled samples are accessible at training stage.Different from binary semi-supervised scenario in which the training set contains labelled samples from both positive and negative classes, in the PU learning setting, only positive samples are labelled due to cost-restriction or issues related to defining what belongs to the negative class.With the objective to deal with this challenging task, here, we propose a new deep learning framework, referred as DMTS-PUL.Our method has two different steps: firstly, it selects a set of reliable negative samples from the set of unlabelled data and, successively, it iteratively enriches the training data by selecting pseudo-labels to train a binary classification model via self-training.Experimental evaluations on several benchmarks have highlighted the quality of DMTS-PUL w.r.t.competing approaches and the obtained findings have pointed out the suitability of our proposal when only small amounts of positive labelled samples are available.
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