Geometric Mean Metric Learning for Label Distribution Learning

Author(s):  
Yansheng Zhai ◽  
Jianhua Dai
Author(s):  
Pengfei Zhu ◽  
Ren Qi ◽  
Qinghua Hu ◽  
Qilong Wang ◽  
Changqing Zhang ◽  
...  

Most existing metric learning methods focus on learning a similarity or distance measure relying on similar and dissimilar relations between sample pairs. However, pairs of samples cannot be simply identified as similar or dissimilar in many real-world applications, e.g., multi-label learning, label distribution learning or tasks with continuous decision values. To this end, in this paper we propose a novel relation alignment metric learning (RAML)  formulation to handle the metric learning problem in those scenarios. Since the relation of two samples can be measured by the difference degree of the decision values, motivated by the consistency of the sample relations in the feature space and decision space, our proposed RAML utilizes the sample relations in the decision space to guide the metric learning in the feature space. Specifically, our RAML method formulates metric learning as a kernel regression problem, which can be efficiently optimized by the standard regression solvers. We carry out several experiments on the single-label classification, multi-label classification, and label distribution learning tasks, to demonstrate that our method achieves favorable performance against the state-of-the-art methods.


2021 ◽  
Vol 436 ◽  
pp. 12-21
Author(s):  
Xinyue Dong ◽  
Shilin Gu ◽  
Wenzhang Zhuge ◽  
Tingjin Luo ◽  
Chenping Hou

Author(s):  
Xiuyi Jia ◽  
Xiaoxia Shen ◽  
Weiwei Li ◽  
Yunan Lu ◽  
Jihua Zhu

Author(s):  
Xin Wen ◽  
Biying Li ◽  
Haiyun Guo ◽  
Zhiwei Liu ◽  
Guosheng Hu ◽  
...  

Author(s):  
Yongbiao Gao ◽  
Yu Zhang ◽  
Xin Geng

Label distribution learning (LDL) is a novel machine learning paradigm that gives a description degree of each label to an instance. However, most of training datasets only contain simple logical labels rather than label distributions due to the difficulty of obtaining the label distributions directly. We propose to use the prior knowledge to recover the label distributions. The process of recovering the label distributions from the logical labels is called label enhancement. In this paper, we formulate the label enhancement as a dynamic decision process. Thus, the label distribution is adjusted by a series of actions conducted by a reinforcement learning agent according to sequential state representations. The target state is defined by the prior knowledge. Experimental results show that the proposed approach outperforms the state-of-the-art methods in both age estimation and image emotion recognition.


IEEE Access ◽  
2020 ◽  
Vol 8 ◽  
pp. 63961-63970
Author(s):  
Heng-Ru Zhang ◽  
Yu-Ting Huang ◽  
Yuan-Yuan Xu ◽  
Fan Min

2019 ◽  
Vol 11 (1) ◽  
pp. 111-121
Author(s):  
Xue-Qiang Zeng ◽  
Su-Fen Chen ◽  
Run Xiang ◽  
Guo-Zheng Li ◽  
Xue-Feng Fu

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