推论
计算机科学
贝叶斯推理
人工智能
机器学习
贝叶斯概率
锚固
马尔科夫蒙特卡洛
航程(航空)
近似推理
启发式
有限理性
认知科学
心理学
复合材料
材料科学
作者
Falk Lieder,Thomas L. Griffiths,Noah D. Goodman
出处
期刊:Neural Information Processing Systems
日期:2012-12-01
卷期号:25: 2690-2798
被引量:78
摘要
Bayesian inference provides a unifying framework for addressing problems in machine learning, artificial intelligence, and robotics, as well as the problems facing the human mind. Unfortunately, exact Bayesian inference is intractable in all but the simplest models. Therefore minds and machines have to approximate Bayesian inference. Approximate inference algorithms can achieve a wide range of time-accuracy tradeoffs, but what is the optimal tradeoff? We investigate time-accuracy tradeoffs using the Metropolis-Hastings algorithm as a metaphor for the mind's inference algorithm(s). We find that reasonably accurate decisions are possible long before the Markov chain has converged to the posterior distribution, i.e. during the period known as burn-in. Therefore the strategy that is optimal subject to the mind's bounded processing speed and opportunity costs may perform so few iterations that the resulting samples are biased towards the initial value. The resulting cognitive process model provides a rational basis for the anchoring-and-adjustment heuristic. The model's quantitative predictions are tested against published data on anchoring in numerical estimation tasks. Our theoretical and empirical results suggest that the anchoring bias is consistent with approximate Bayesian inference.
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