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1. Introduction
Federated learning, also known as collaborative learning, is a distributed learning technique in which multiple nodes participate in the model training process. Each node keeps its own data cure while collaborating with other nodes to compute a shared predictive model. Federated learning provides a powerful and efficient way to leverage the collective strengths of many data sources without the need to move data. In recent years, with the advances of distributed systems, communication networks, and machine learning algorithms, federated learning has become one of the most promising distributed technologies.
This survey paper is organized as follows. In Section 2, we introduce the concepts of federated learning and discuss the motivation for its u. In Section 3, we review the state-of-the-art of federated learning algorithms and applications. In Section 4, we discuss the challenges and potential future directions of federated learning rearch. Finally, Section 5
prents our conclusions and outlook.
2. Federated Learning Background
Federated learning has been widely studied in the field of distributed learning. It is a technique for extracting learning models from distributed raw data sourced from multiple nodes. Federated learning enables data owners to maintain control over the data while collaborating with other data owners to train a shared model. Federated learning is a form of collaborative, decentralized learning where each node can contribute its data or model to the training process without transferring the data or model to a central rver. Each node maintains its own data while participating in the training process.
The goal of federated learning is to enable data owners to curely and collaboratively train a global model without the need to move the data. By leveraging the collective strengths of multiple data sources, federated learning can provide more accurate models and improve generalization performance.
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3. Federated Learning Algorithms and Applications
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Federated learning algorithms can be broadly divided into two categories: model-driven and data-driven. Model-driven algorithms focus on having each node contribute its own model to the global training process. Data-driven algorithms, on the other hand, focus on having each node share its data with the global training process.考研在线培训
num Federated learning has been applied to a number of different areas, such as, distributed machine learning, distributed deep learning, distributed natural language processing, distributed recommendation systems, and distributed speech recognition.
With advances in technology, federated learning can be applied to a variety of distributed systems, such as mobile networks, Internet of Things (IoT), edge computing, and nsor networks. In the systems, federated learning can enable distributed applications to collaboratively train models without transferring the data or models between nodes.
4. Challenges and Future Directions
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Despite the progress made in federated learning algorithms and applications, there are still many challenges ahead. For example, there are still many open issues related to privacy and curity. In addition, it is still unclear how to properly design and evaluate distributed machine learning algorithms in a federated learning tting.
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In the future, further rearch is needed to address the challenges of privacy and curity in federated learning. Other areas of rearch include the development of optimized communication protocols, strategies for resource allocation, and algorithms for distributed optimization.
5. Conclusions and Outlook
standard deviation This survey paper prented an overview of the state-of-the-art in federated learning algorithms and applications. We discusd the motivation for federated learning and its potential applications. We also reviewed the existing challenges in federated learning and outlined the potential future rearch directions.
Federated learning is an exciting and promising rearch field that has the potential to revolutionize the way distributed machine learning is done. In the future, we expect to e more rearch and exciting applications in the field.。