In several applications of automatic diagnosis and active learning a central problem is the evaluation of a discrete function by adaptively querying the values of its variables until the values read uniquely determine the value of the function. In general, the process of reading the value of a variable might involve some cost, computational or even a fee to be paid for the experiment required for obtaining the value. This cost should be taken into account when deciding the next variable to read. The goal is to design a strategy for evaluating the function incurring little cost (in the worst case or in expectation according to a prior distribution on the possible variables ’ assignments). Our algorithm builds a strategy (decision tree) which...
Let f be a function on a set of variables V. For each x ∈ V, let c(x) be the cost of reading the val...
Machine learning is now in a state to get major industrial applications. The most important applicat...
Learning classification and regression models is one of the most important subfields of machine lear...
In several applications of automatic diagnosis and active learning, a central problem is the evaluat...
In several applications of automatic diagnosis and active learning a central problem is the evaluati...
In several applications of automatic diagnosis and active learning a central problem is the evaluati...
We study the problem of evaluating a discrete function by adaptively querying the values of its vari...
We characterize the best possible trade-off achievable when optimizing the construction of a decisio...
We characterize the best possible trade-off achievable when optimizing the construction of a decisio...
Let f be a function on a set of variables V. For each x ∈ V, let c(x) be the cost of reading the val...
We study cost-sensitive learning of decision trees that incorporate both test costs and misclassific...
In this paper, we address the issue of evaluating decision trees generated from training examples by...
Abstract. We study cost-sensitive learning of decision trees that incorporate both test costs and mi...
In [Charikar et al. 2002] the authors proposed a new model for studying the function evaluation prob...
We investigate algorithms for different steps in the decision making process, focusing on systems wh...
Let f be a function on a set of variables V. For each x ∈ V, let c(x) be the cost of reading the val...
Machine learning is now in a state to get major industrial applications. The most important applicat...
Learning classification and regression models is one of the most important subfields of machine lear...
In several applications of automatic diagnosis and active learning, a central problem is the evaluat...
In several applications of automatic diagnosis and active learning a central problem is the evaluati...
In several applications of automatic diagnosis and active learning a central problem is the evaluati...
We study the problem of evaluating a discrete function by adaptively querying the values of its vari...
We characterize the best possible trade-off achievable when optimizing the construction of a decisio...
We characterize the best possible trade-off achievable when optimizing the construction of a decisio...
Let f be a function on a set of variables V. For each x ∈ V, let c(x) be the cost of reading the val...
We study cost-sensitive learning of decision trees that incorporate both test costs and misclassific...
In this paper, we address the issue of evaluating decision trees generated from training examples by...
Abstract. We study cost-sensitive learning of decision trees that incorporate both test costs and mi...
In [Charikar et al. 2002] the authors proposed a new model for studying the function evaluation prob...
We investigate algorithms for different steps in the decision making process, focusing on systems wh...
Let f be a function on a set of variables V. For each x ∈ V, let c(x) be the cost of reading the val...
Machine learning is now in a state to get major industrial applications. The most important applicat...
Learning classification and regression models is one of the most important subfields of machine lear...