利用机器学习从档案信息推断大脑模型关系时降低信息收集成本

Reduction of Information Collection Cost for Inferring Brain Model Relations From Profile Information Using Machine Learning

IEEE Transactions on Systems, Man, and Cybernetics: Systems · 2021
被引 2
ABS 3

中文导读

提出一种方案,通过机器学习从档案模型推断大脑模型,并用特征选择方法减少问卷题目数量,从而在保持推断性能的同时降低信息收集成本。

Abstract

A content recommendation system based on human brain activity has become a reality. However, the cost of collecting the information from people is problematic. This article proposes a scheme that resolves the tradeoff between the inference performance from a profile model to a brain model and the cost of collecting profile information. In the proposed scheme, a machine learning model infers the brain model from the profile model and a feature selection method is applied to reduce the cost, i.e., the number of questionnaire items, of collecting profile information. Since only the top questionnaire items with the highest importance scores are used, we can maintain the inference performance as high as possible while limiting the number of questionnaire items. We demonstrate the effectiveness of the proposed scheme with a performance evaluation using an experimentally obtained brain model and a profile model created from real profile information. The results over different experimental parameters, video lengths, and feature selection methods demonstrate that the proposed scheme successfully identifies the top questionnaire items that contribute most significantly to the inference of brain models.

机器学习特征选择推荐系统脑模型推断