Geostatistical semi-supervised learning for spatial prediction

被引:4
|
作者
Fouedjio, Francky [1 ]
Talebi, Hassan [2 ]
机构
[1] Rio Tinto, Data & Analyt, 152-158 St Georges Terrace, Perth, WA 6000, Australia
[2] Rio Tinto, Dev & Technol, 152-158 St Georges Terrace, Perth, WA 6000, Australia
来源
ARTIFICIAL INTELLIGENCE IN GEOSCIENCES | 2022年 / 3卷
关键词
Labeled spatial data; Unlabeled spatial data; Spatial autocorrelation; Pseudo labeling; Spatial prediction; REMOTE-SENSING DATA; RANDOM FOREST; CLASSIFICATION; INTERPOLATION; ALGORITHMS; REGION;
D O I
10.1016/j.aiig.2022.12.002
中图分类号
P [天文学、地球科学];
学科分类号
07 ;
摘要
Geoscientists are increasingly tasked with spatially predicting a target variable in the presence of auxiliary information using supervised machine learning algorithms. Typically, the target variable is observed at a few sampling locations due to the relatively time-consuming and costly process of obtaining measurements. In contrast, auxiliary variables are often exhaustively observed within the region under study through the increasing development of remote sensing platforms and sensor networks. Supervised machine learning methods do not fully leverage this large amount of auxiliary spatial data. Indeed, in these methods, the training dataset includes only labeled data locations (where both target and auxiliary variables were measured). At the same time, unlabeled data locations (where auxiliary variables were measured but not the target variable) are not considered during the model training phase. Consequently, only a limited amount of auxiliary spatial data is utilized during the model training stage. As an alternative to supervised learning, semi-supervised learning, which learns from labeled as well as unlabeled data, can be used to address this problem. However, conventional semi-supervised learning techniques do not account for the specificities of spatial data. This paper introduces a spatial semi-supervised learning framework where geostatistics and machine learning are combined to harness a large amount of unlabeled spatial data in combination with typically a smaller set of labeled spatial data. The main idea consists of leveraging the target variable's spatial autocorrelation to generate pseudo labels at unlabeled data points that are geographically close to labeled data points. This is achieved through geostatistical conditional simulation, where an ensemble of pseudo labels is generated to account for the uncertainty in the pseudo labeling process. The observed labels are augmented by this ensemble of pseudo labels to create an ensemble of pseudo training datasets. A supervised machine learning model is then trained on each pseudo training dataset, followed by an aggregation of trained models. The proposed geostatistical semi-supervised learning method is applied to synthetic and real-world spatial datasets. Its predictive performance is compared with some classical supervised and semi-supervised machine learning methods. It appears that it can effectively leverage a large amount of unlabeled spatial data to improve the target variable's spatial prediction.
引用
收藏
页码:162 / 178
页数:17
相关论文
共 50 条
  • [41] Semi-Supervised Multitask Learning for Scene Recognition
    Lu, Xiaoqiang
    Li, Xuelong
    Mou, Lichao
    IEEE TRANSACTIONS ON CYBERNETICS, 2015, 45 (09) : 1967 - 1976
  • [42] One-Class Semi-supervised Learning
    Bauman, Evgeny
    Bauman, Konstantin
    BRAVERMAN READINGS IN MACHINE LEARNING: KEY IDEAS FROM INCEPTION TO CURRENT STATE, 2018, 11100 : 189 - 200
  • [43] Revisiting Consistency Regularization for Semi-Supervised Learning
    Fan, Yue
    Kukleva, Anna
    Dai, Dengxin
    Schiele, Bernt
    INTERNATIONAL JOURNAL OF COMPUTER VISION, 2023, 131 (03) : 626 - 643
  • [44] Semi-supervised learning for hierarchically structured networks
    Kim, Myungjun
    Lee, Dong-gi
    Shin, Hyunjung
    PATTERN RECOGNITION, 2019, 95 : 191 - 200
  • [45] Semi-supervised learning via manifold regularization
    Mao, Yu
    Zhou, Yan-Quan
    Li, Rui-Fan
    Wang, Xiao-Jie
    Zhong, Yi-Xin
    Journal of China Universities of Posts and Telecommunications, 2012, 19 (06): : 79 - 88
  • [46] Distributed Semi-Supervised Learning With Missing Data
    Xu, Zhen
    Liu, Ying
    Li, Chunguang
    IEEE TRANSACTIONS ON CYBERNETICS, 2021, 51 (12) : 6165 - 6178
  • [47] Sharpened graph ensemble for semi-supervised learning
    Choi, Inae
    Park, Kanghee
    Shin, Hyunjung
    INTELLIGENT DATA ANALYSIS, 2013, 17 (03) : 387 - 398
  • [48] Adaptive semi-supervised learning from stronger augmentation transformations of discrete text information
    Zhang, Xuemiao
    Tan, Zhouxing
    Lu, Fengyu
    Yan, Rui
    Liu, Junfei
    KNOWLEDGE AND INFORMATION SYSTEMS, 2024, 66 (08) : 4609 - 4629
  • [49] Landslide susceptibility prediction modelling based on semi-supervised XGBoost model
    Shua, Qiangqiang
    Peng, Hongbin
    Li, Jingkai
    GEOLOGICAL JOURNAL, 2024, 59 (09) : 2655 - 2667
  • [50] SEMI-SUPERVISED NONPARAMETRIC BAYESIAN MODELLING OF SPATIAL PROTEOMICS
    Crook, By Oliver m.
    Lilley, Kathryn s.
    Gatto, Laurent
    Kirk, Paul D. W.
    ANNALS OF APPLIED STATISTICS, 2022, 16 (04) : 2554 - 2576