Adaptive Deep Incremental Learning - Assisted Missing Data Imputation for Streaming Data

被引:1
|
作者
Syavasya, C. V. S. R. [1 ]
Lakshmi, M. A. [1 ]
机构
[1] Gitam Univ, Dept Comp Sci & Engn, Rudraram 502329, Telangana, India
关键词
Incremental learning; adaptive learning; learning rate; knowledge distillation; imputation; INTERNET; THINGS;
D O I
10.1142/S021926592143009X
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
With the rapid explosion of the data streams from the applications, ensuring accurate data analysis is essential for effective real-time decision making. Nowadays, data stream applications often confront the missing values that affect the performance of the classification models. Several imputation models have adopted the deep learning algorithms for estimating the missing values; however, the lack of parameter and structure tuning in classification, degrade the performance for data imputation. This work presents the missing data imputation model using the adaptive deep incremental learning algorithm for streaming applications. The proposed approach incorporates two main processes: enhancing the deep incremental learning algorithm and enhancing deep incremental learning-based imputation. Initially, the proposed approach focuses on tuning the learning rate with both the Adaptive Moment Estimation (Adam) along with Stochastic Gradient Descent (SGD) optimizers and tuning the hidden neurons. Secondly, the proposed approach applies the enhanced deep incremental learning algorithm to estimate the imputed values in two steps: (i) imputation process to predict the missing values based on the temporal-proximity and (ii) generation of complete IoT dataset by imputing the missing values from both the predicted values. The experimental outcomes illustrate that the proposed imputation model effectively transforms the incomplete dataset into a complete dataset with minimal error.
引用
收藏
页数:18
相关论文
共 50 条
  • [31] From Missing Data Imputation to Data Generation
    Neves, Diogo Telmo
    Alves, Joao
    Naik, Marcel Ganesh
    Proenca, Alberto Jose
    Prasser, Fabian
    [J]. JOURNAL OF COMPUTATIONAL SCIENCE, 2022, 61
  • [32] Missing data, imputation, and endogeneity
    McDonough, Ian K.
    Millimet, Daniel L.
    [J]. JOURNAL OF ECONOMETRICS, 2017, 199 (02) : 141 - 155
  • [33] Fast Online Incremental Learning on Mixture Streaming Data
    Wang, Yi
    Fan, Xin
    Luo, Zhongxuan
    Wang, Tianzhu
    Min, Maomao
    Luo, Jiebo
    [J]. THIRTY-FIRST AAAI CONFERENCE ON ARTIFICIAL INTELLIGENCE, 2017, : 2739 - 2745
  • [34] Imputation of Missing Healthcare Data
    Chowdhury, Mohaimanul Hoque
    Islam, Muhammad Kamrul
    Khan, Shahidul Islam
    [J]. 2017 20TH INTERNATIONAL CONFERENCE OF COMPUTER AND INFORMATION TECHNOLOGY (ICCIT), 2017,
  • [35] BAYESIAN IMPUTATION FOR MISSING DATA
    Nads, Azman A.
    Polestico, Daisy Lou L.
    [J]. ADVANCES AND APPLICATIONS IN STATISTICS, 2022, 79 : 83 - 104
  • [36] Data variability in the imputation quality of missing data
    Stochero, Elisandra Lucia Moro
    Lucio, Alessandro Dal'Col
    Jacobi, Luciane Flores
    [J]. ACTA SCIENTIARUM-AGRONOMY, 2024, 46
  • [37] Multiple imputation for missing data
    Patrician, PA
    [J]. RESEARCH IN NURSING & HEALTH, 2002, 25 (01) : 76 - 84
  • [38] Influence of Data Distribution in Missing Data Imputation
    Santos, Miriam Seoane
    Soares, Jastin Pompeu
    Abreu, Pedro Henriques
    Araujo, Helder
    Santos, Joao
    [J]. ARTIFICIAL INTELLIGENCE IN MEDICINE, AIME 2017, 2017, 10259 : 285 - 294
  • [39] Imputation of missing data in surveys
    Rässler, S
    [J]. JAHRBUCHER FUR NATIONALOKONOMIE UND STATISTIK, 2000, 220 (01): : 64 - 94
  • [40] Multiple imputation of missing data
    Lydersen, Stian
    [J]. TIDSSKRIFT FOR DEN NORSKE LAEGEFORENING, 2022, 142 (02) : 151 - 151