Machine Advisors: Integrating Large Language Models Into Democratic Assemblies

被引:1
|
作者
Specian, Petr [1 ,2 ]
机构
[1] Prague Univ Econ & Business, Fac Econ, Dept Philosophy, W Churchill Sq 1938-4, Prague 3, 13067, Czech Republic
[2] Charles Univ Prague, Fac Humanities, Dept Psychol & Life Sci, Prague, Czech Republic
关键词
Large language models; epistemic democracy; institutional design; artificial intelligence;
D O I
10.1080/02691728.2024.2379271
中图分类号
N09 [自然科学史]; B [哲学、宗教];
学科分类号
01 ; 0101 ; 010108 ; 060207 ; 060305 ; 0712 ;
摘要
Could the employment of large language models (LLMs) in place of human advisors improve the problem-solving ability of democratic assemblies? LLMs represent the most significant recent incarnation of artificial intelligence and could change the future of democratic governance. This paper assesses their potential to serve as expert advisors to democratic representatives. While LLMs promise enhanced expertise availability and accessibility, they also present specific challenges. These include hallucinations, misalignment and value imposition. After weighing LLMs' benefits and drawbacks against human advisors, I argue that time-tested democratic procedures, such as deliberation and aggregation by voting, provide safeguards that are effective against human and machine advisor shortcomings alike. Additional protective measures may include custom training for advisor LLMs or boosting representatives' competencies in query formulation. Implementation of adversarial proceedings in which LLM advisors would debate each other and provide dissenting opinions is likely to yield further epistemic benefits. Overall, promising interventions that would mitigate the LLM risks appear feasible. Machine advisors could thus empower human decision-makers to make more autonomous, higher-quality decisions. On this basis, I defend the hypothesis that LLMs' careful integration into policymaking could augment democracy's ability to address today's complex social problems.
引用
收藏
页数:16
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