Please use this identifier to cite or link to this item:
http://dspace.cityu.edu.hk/handle/2031/9527
Title: | Data valuation for machine learning and federated learning |
Authors: | Chen, Jiaqing (陳佳晴) |
Department: | Department of Computer Science |
Issue Date: | 2021 |
Course: | CS4514 Project |
Programme: | Bachelor of Science (Honours) in Computer Science |
Supervisor: | Dr. Wang, Cong |
Citation: | Chen, J. (2021). Data valuation for machine learning and federated learning (Outstanding Academic Papers by Students (OAPS), City University of Hong Kong). |
Abstract: | Recently, federated learning (FL) emerges as a promising framework to collect the dispersed data and train a collaborative machine learning (ML) model with privacy protection. An incentive scheme plays a crucial role in the FL system as they encourage long-term client joining. However, due to information asymmetry between the central server and local users, a key challenge is to evaluate participants' contributions in an objective and efficient manner so as to allocate the payoff fairly. Data valuation in ML context is a systematic study on quantifying the usefulness of a specific data point in a prediction model. It provides a potential solution for FL to measure local client's quality. However, exponential computational complexity and additional communication costs are critical challenges of applying data valuation-based incentive schemes. In this project, we propose a new round-based data valuation (RDV) approach to serve as a real-time incentive mechanism. It takes advantage of the FL system's unique model aggregation property to increase the valuation efficiency and provide a fine-grained contribution estimation on a per-round basis. It also offers a guideline for the central server to selectively aggregate the local updates to train a better-performing model. We empirically demonstrate the effectiveness of RDV in identifying high-quality participants, the efficiency in allocating payoff, and its potentials in federation optimization. |
Appears in Collections: | OAPS - Dept. of Computer Science |
Files in This Item:
File | Size | Format | |
---|---|---|---|
fulltext.html | 153 B | HTML | View/Open |
Items in Digital CityU Collections are protected by copyright, with all rights reserved, unless otherwise indicated.