Budgeted Batch Mode Active Learning with Generalized Cost and Utility Functions

被引:0
|
作者
Agarwal, Arvind [1 ]
Mujumdar, Shashank [1 ]
Gupta, Nitin [1 ]
Mehta, Sameep [1 ]
机构
[1] IBM Res India, New Delhi, India
来源
2020 25TH INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION (ICPR) | 2021年
关键词
D O I
10.1109/ICPR48806.2021.9412237
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Active learning reduces the labeling cost by actively querying labels for the most valuable data points. Typical active learning methods select the most informative examples one-at-a-time, their batch variants exist which select a set of most informative points instead of one point at a time. These points are selected in such a way that when added to the training data along with their labels, they provide maximum benefit to the underlying model. In this paper, we present a learning framework that actively selects optimal set of examples (in a batch) within a given budget, based on given utility and cost functions. The framework is generic enough to incorporate any utility and any cost function defined on a set of examples. Furthermore, we propose a novel utility function based on the Facility Location problem that considers three important characteristics of utility i.e., diversity, density and point utility. We also propose a novel cost function, by formulating the cost computation problem as an optimization problem, the solution to which turns out to be the minimum spanning tree. Thus, our framework provides the optimal batch of points within the given budget based on the cost and utility functions. We evaluate our method on several data sets and show its superior performance over baseline methods.
引用
收藏
页码:7692 / 7698
页数:7
相关论文
共 50 条
  • [41] A Multicriterion Query-Based Batch Mode Active Learning Technique
    Jiao, Yang
    Zhao, Pengpeng
    Wu, Jian
    Shi, Yujie
    Cui, Zhiming
    FOUNDATIONS OF INTELLIGENT SYSTEMS (ISKE 2013), 2014, 277 : 669 - 680
  • [42] Batch-Mode Active Learning via Error Bound Minimization
    Gu, Quanquan
    Zhang, Tong
    Han, Jiawei
    UNCERTAINTY IN ARTIFICIAL INTELLIGENCE, 2014, : 300 - 309
  • [44] Online Adaptive Asymmetric Active Learning for Budgeted Imbalanced Data
    Zhang, Yifan
    Zhao, Peilin
    Cao, Jiezhang
    Ma, Wenye
    Huang, Junzhou
    Wu, Qingyao
    Tan, Mingkui
    KDD'18: PROCEEDINGS OF THE 24TH ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY & DATA MINING, 2018, : 2768 - 2777
  • [45] Batch Mode Active Learning for Object Detection Based on Maximum Mean Discrepancy
    Liu, Yingying
    Wang, Yang
    Sowmya, Arcot
    2015 INTERNATIONAL CONFERENCE ON DIGITAL IMAGE COMPUTING: TECHNIQUES AND APPLICATIONS (DICTA), 2015, : 205 - 211
  • [46] Multi-class batch-mode active learning for image classification
    Joshi, Ajay J.
    Porikli, Fatih
    Papanikolopoulos, Nikolaos
    2010 IEEE INTERNATIONAL CONFERENCE ON ROBOTICS AND AUTOMATION (ICRA), 2010, : 1873 - 1878
  • [47] Multi-View Learning with Batch Mode Active Selection for Image Retrieval
    Yang, Wenhui
    Liu, Guiquan
    Zhang, Lei
    Chen, Enhong
    2012 21ST INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION (ICPR 2012), 2012, : 979 - 982
  • [48] Semi-supervised SVM batch mode active learning for image retrieval
    Hoi, Steven C. H.
    Jin, Rong
    Zhu, Jianke
    Lyu, Michael R.
    2008 IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION, VOLS 1-12, 2008, : 71 - +
  • [49] Batch Active Learning at Scale
    Citovsky, Gui
    DeSalvo, Giulia
    Gentile, Claudio
    Karydas, Lazaros
    Rajagopalan, Anand
    Rostamizadeh, Afshin
    Kumar, Sanjiv
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 34 (NEURIPS 2021), 2021, 34
  • [50] Generalized benefit functions and measurement of utility
    Briec, W
    Gardères, P
    MATHEMATICAL METHODS OF OPERATIONS RESEARCH, 2004, 60 (01) : 101 - 123