Computational principal-agent problems
Collecting and processing large amounts of data is becoming increasingly crucialin our society. We model this task as evaluating a function f over a large vector x =(x1,...,xn), which is unknown, but drawn from a publicly known distribution X. In our model, learning each component of the input x is...
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Veröffentlicht in: | Theoretical economics 2018-05, Vol.13 (2), p.553-578 |
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Sprache: | eng |
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Zusammenfassung: | Collecting and processing large amounts of data is becoming increasingly crucialin our society. We model this task as evaluating a function f over a large vector x =(x1,...,xn), which is unknown, but drawn from a publicly known distribution X. In our model, learning each component of the input x is costly, but computing the output f(x) has zero cost once x is known. We consider the problem of a principal who wishes to delegate the evaluation of f to an agent whose cost of learning any number of components of x is always lower than the corresponding cost of the principal. We prove that, for every continuous function f and every ε>0, the principal can - by learning a single component xi of x - incentivize the agent to report the correct value f(x)with accuracy ε. complexity. |
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ISSN: | 1555-7561 1933-6837 1555-7561 |
DOI: | 10.3982/TE1815 |