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Hidden Markov Models:Inverse Filtering,Belief Estimation and Privacy Protection
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作者 LOUrENCO Ines MATTILA robert +2 位作者 rojas cristian r. HU Xiaoming WAHLBErG Bo 《Journal of Systems Science & Complexity》 SCIE EI CSCD 2021年第5期1801-1820,共20页
A hidden Markov model(HMM)comprises a state with Markovian dynamics that can only be observed via noisy sensors.This paper considers three problems connected to HMMs,namely,inverse filtering,belief estimation from act... A hidden Markov model(HMM)comprises a state with Markovian dynamics that can only be observed via noisy sensors.This paper considers three problems connected to HMMs,namely,inverse filtering,belief estimation from actions,and privacy enforcement in such a context.First,the authors discuss how HMM parameters and sensor measurements can be reconstructed from posterior distributions of an HMM filter.Next,the authors consider a rational decision-maker that forms a private belief(posterior distribution)on the state of the world by filtering private information.The authors show how to estimate such posterior distributions from observed optimal actions taken by the agent.In the setting of adversarial systems,the authors finally show how the decision-maker can protect its private belief by confusing the adversary using slightly sub-optimal actions.Applications range from financial portfolio investments to life science decision systems. 展开更多
关键词 Belief estimation counter-adversarial systems hidden Markov models inverse decision making inverse filtering
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