Motivated by recent developments in designing algorithms based on individual item scores for solving utility maximization problems, we study the framework of using test scores, defined as a statistic of observed individual item performance data, for solving the budgeted stochastic utility maximization problem. We extend an existing scoring mechanism, namely, the replication test scores, to incorporate heterogeneous item costs as well as item values. We show that a natural greedy algorithm that selects items solely based on their replication test scores outputs solutions within a constant factor of the optimum for the class of functions satisfying an extended diminishing returns property. Our algorithms and approximation guarantees assume th...
Based on the adaptive stochastic control approach, we herein propose an alternative item selection p...
We revisit the Stochastic Score Classification (SSC) problem introduced by Gkenosis et al. (ESA 2018...
Running machine learning algorithms on large and rapidly growing volumes of data is often computatio...
We study the canonical problem of maximizing a stochastic submodular function subject to a cardinali...
This paper introduces a class of robust estimators of the parameters of a stochastic utility functio...
We formulate a new stochastic submodular maximization problem by introducing the performance-depende...
Optimization by stochastic gradient descent is an important component of many large-scale machine le...
We study the stochastic versions of a broad class of combinatorial problems where the weights of the...
Kitamura and Stoye (2018) recently proposed a nonparametric statistical test for random utility mode...
We consider the problem of sketching a stochastic valuation function, defined as the expectation of ...
Kitamura and Stoye (2018) recently proposed a nonparametric statistical test for random utility mode...
We consider the problem of A-B testing when the impact of the treatment is marred by a large number ...
Stochastic programming combines ideas from deterministic optimization with probability and statistic...
International audienceWe consider the classical problem of sequential resource allocation where a de...
A multitude of heuristic stochastic optimization algorithms have been described in literature to obt...
Based on the adaptive stochastic control approach, we herein propose an alternative item selection p...
We revisit the Stochastic Score Classification (SSC) problem introduced by Gkenosis et al. (ESA 2018...
Running machine learning algorithms on large and rapidly growing volumes of data is often computatio...
We study the canonical problem of maximizing a stochastic submodular function subject to a cardinali...
This paper introduces a class of robust estimators of the parameters of a stochastic utility functio...
We formulate a new stochastic submodular maximization problem by introducing the performance-depende...
Optimization by stochastic gradient descent is an important component of many large-scale machine le...
We study the stochastic versions of a broad class of combinatorial problems where the weights of the...
Kitamura and Stoye (2018) recently proposed a nonparametric statistical test for random utility mode...
We consider the problem of sketching a stochastic valuation function, defined as the expectation of ...
Kitamura and Stoye (2018) recently proposed a nonparametric statistical test for random utility mode...
We consider the problem of A-B testing when the impact of the treatment is marred by a large number ...
Stochastic programming combines ideas from deterministic optimization with probability and statistic...
International audienceWe consider the classical problem of sequential resource allocation where a de...
A multitude of heuristic stochastic optimization algorithms have been described in literature to obt...
Based on the adaptive stochastic control approach, we herein propose an alternative item selection p...
We revisit the Stochastic Score Classification (SSC) problem introduced by Gkenosis et al. (ESA 2018...
Running machine learning algorithms on large and rapidly growing volumes of data is often computatio...