Efficient Multi-Kernel Learning for Multiple Data Sets
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Efficient Multi-Kernel Learning for Multiple Data Sets

Efficient Multi-Kernel Learning for Multiple Data Sets


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About the Book

Efficient multi-kernel learning algorithms for multiple data sets are essential for effective data analysis and decision-making in various domains. Multi-kernel learning refers to the process of combining multiple kernels or similarity measures to enhance the performance of machine learning models.

Traditional single-kernel approaches may not capture the complex relationships and patterns present in diverse data sets. By incorporating multiple kernels, multi-kernel learning algorithms enable the fusion of information from different data sources, leading to improved predictive accuracy and generalization.

Efficiency is a crucial aspect in multi-kernel learning, as the computational complexity can increase significantly with the number of data sets and kernels. Efficient algorithms aim to reduce the computational burden without sacrificing accuracy. They employ techniques such as kernel selection, kernel approximation, and kernel fusion to optimize the learning process and achieve a good balance between computational efficiency and model performance.

Efficient multi-kernel learning algorithms have wide-ranging applications. They can be used in multi-modal data analysis, where data from different sources, such as text, images, and sensor data, need to be integrated for comprehensive insights. These algorithms also find utility in domains like bioinformatics, finance, social network analysis, and image recognition, where multiple data sets are available for analysis.

By leveraging efficient multi-kernel learning algorithms, researchers and practitioners can overcome the challenges of analyzing multiple data sets effectively. These algorithms facilitate the discovery of hidden patterns and relationships, leading to improved decision-making, predictive modeling, and data-driven insights across diverse fields.


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Product Details
  • ISBN-13: 9785617143746
  • Publisher: Younus Publication
  • Binding: Paperback
  • Language: English
  • Returnable: Y
  • Weight: 245 gr
  • ISBN-10: 5617143743
  • Publisher Date: 10 Jul 2023
  • Height: 229 mm
  • No of Pages: 136
  • Spine Width: 7 mm
  • Width: 152 mm


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Efficient Multi-Kernel Learning for Multiple Data Sets
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Efficient Multi-Kernel Learning for Multiple Data Sets
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