Comparing and Analysis of Different Optimization Techniques on Sparse Multi-Class Data

被引:0
|
作者
Panda, Digbijay [1 ]
Singh, Sanika [1 ]
Mukherjee, Saurabh [2 ]
Chakraborty, Sudeshna [1 ]
机构
[1] Sharda Univ, Greater Noida, India
[2] Banasthali Vidyapith, Jaipur, Rajasthan, India
关键词
Accuracy Curve; CIFAR-10; Convolutional Neural Network; Gradient Descent; Loss Curve; Optimizers;
D O I
10.1109/iccike47802.2019.9004239
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
It is a matter of fact that there are certain optimization techniques for sparse data and multi-class data. Optimization techniques generally maximizes or minimizes an error function which depends on the internal parameter of our training model. The effect of different major optimizers on sparse multi-class data can be observed, analyzed and compared based on their loss and accuracy curve. For the analysis, CIFAR-10 data are chosen and trained on a convolutional neural network for different optimizers and then validate on testing data. The objective of this study was to find out the effects of different major optimization techniques in various applications of image processing and state of the art Deep learning. The Result of the study reveals that Nadam will be the best suiting optimization techniques for sparse multi-class datasets.
引用
收藏
页码:528 / 531
页数:4
相关论文
共 50 条
  • [1] Multi-Class Sparse Bayesian Regression for Neuroimaging Data Analysis
    Michel, Vincent
    Eger, Evelyn
    Keribin, Christine
    Thirion, Bertrand
    MACHINE LEARNING IN MEDICAL IMAGING, 2010, 6357 : 50 - +
  • [2] Comparing multi-class classifier performance by multi-class ROC analysis: A nonparametric approach
    Xu, Jingyan
    NEUROCOMPUTING, 2024, 583
  • [3] General sparse multi-class linear discriminant analysis
    Safo, Sandra E.
    Ahn, Jeongyoun
    COMPUTATIONAL STATISTICS & DATA ANALYSIS, 2016, 99 : 81 - 90
  • [4] Logical Analysis of Multi-Class Data
    Felix Avila-Herrera, Juan
    Subasi, Munevver Mine
    2015 XLI LATIN AMERICAN COMPUTING CONFERENCE (CLEI), 2015, : 276 - 285
  • [5] Comparing Different Oversampling Methods in Predicting Multi-Class Educational Datasets Using Machine Learning Techniques
    Tariq, Muhammad Arham
    Sargano, Allah Bux
    Iftikhar, Muhammad Aksam
    Habib, Zulfiqar
    CYBERNETICS AND INFORMATION TECHNOLOGIES, 2023, 23 (04) : 199 - 212
  • [6] Multi-class WHMBoost: An ensemble algorithm for multi-class imbalanced data
    Zhao, Jiakun
    Jin, Ju
    Zhang, Yibo
    Zhang, Ruifeng
    Chen, Si
    INTELLIGENT DATA ANALYSIS, 2022, 26 (03) : 599 - 614
  • [7] A Sparse Multi-class Classifier for Biomarker Screening
    Liu, Tzu-Yu
    Wiesel, Ami
    Hero, Alfred O.
    2013 IEEE GLOBAL CONFERENCE ON SIGNAL AND INFORMATION PROCESSING (GLOBALSIP), 2013, : 77 - 80
  • [8] Commodity dynamics: A sparse multi-class approach
    Barbaglia, Luca
    Wilms, Ines
    Croux, Christophe
    ENERGY ECONOMICS, 2016, 60 : 62 - 72
  • [9] Sparse Representation Using Deep Learning to Classify Multi-Class Complex Data
    Fard, Seyed Mehdi Hazrati
    Hashemi, Sattar
    IRANIAN JOURNAL OF SCIENCE AND TECHNOLOGY-TRANSACTIONS OF ELECTRICAL ENGINEERING, 2019, 43 (Suppl 1) : 637 - 647
  • [10] Sparse Representation Using Deep Learning to Classify Multi-Class Complex Data
    Seyed Mehdi Hazrati Fard
    Sattar Hashemi
    Iranian Journal of Science and Technology, Transactions of Electrical Engineering, 2019, 43 : 637 - 647