A Universal Intelligence Measurement Method Based on Meta-analysis

Zheming Yang, Wen Ji
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引用次数: 2

Abstract

The multiple factors of intelligence measurement are critical in the intelligent science. The intelligence measurement is typically built at a model based on the multiple factors. The different digital self is generally difficult to measure due to the uncertainty among multiple factors. Effective methods for the universal intelligence measurement are therefore important to different digital-selves. In this paper, we propose a universal intelligence measurement method based on meta-analysis. Firstly, we get study data through keywords in database and delete the low-quality data. Secondly, after encoding the data, we compute the effect value by Odds ratio, Relatve risk and Risk difference. Then we test the homogeneity by Q-test and analysis the bias by funnel plots. Thirdly, we select the Fixed Effect and Random Effect as statistical model. Finally, simulation results confirm that our method can effectively solve the multiple factors of different digital self. Especially for the intelligence of human, machine, company, government and institution.
一种基于元分析的通用智力测量方法
智能测量的多因素是智能科学研究的重要内容。智力测量通常建立在一个基于多个因素的模型上。由于多种因素之间的不确定性,不同的数字自我通常难以测量。因此,有效的通用智能测量方法对不同的数字自我具有重要意义。本文提出了一种基于元分析的通用智力测量方法。首先,通过数据库中的关键词获取研究数据,删除质量较差的数据。其次,对数据进行编码后,通过比值比、相对风险和风险差计算效果值。然后用q检验检验同质性,用漏斗图分析偏差。第三,选取固定效应和随机效应作为统计模型。最后,仿真结果证实了该方法可以有效地解决不同数字自我的多因素问题。尤其适用于人、机器、公司、政府和机构的智能化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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