This paper studies the problem of learning diagnostic policies from training examples. A diagnostic policy is a complete description of the decision-making actions of a diagnostician (i.e., tests followed by a diagnostic decision) for all possible combinations of test results. An optimal diagnostic policy is one that minimizes the expected total cost, which is the sum of measurement costs and misdiagnosis costs. In most diagnostic settings, there is a tradeo between these two kinds of costs. This paper formalizes diagnostic decision making as a Markov Decision Process (MDP). The paper introduces a new family of systematic search algorithms based on the AO algo-rithm to solve this MDP. To make AO ecient, the paper describes an admissible he...
In this thesis, we consider statistical issues in classification for disease using diagnostic testin...
Many real world problems can be expressed as optimisation problems. Solving such problems means to f...
Stochastic optimisers such as Evolutionary Algorithms outperform random search due to their ability ...
Graduation date: 2004In its simplest form, the process of diagnosis is a decision-making process in ...
Determining the most efficient use of diagnostic tests is one of the complex issues facing the medic...
Many real-world scenarios require making informed choices after some sequence of actions that yield ...
This paper presents a prescriptive account of diagnostic problem solving, or diagnosis, in quality a...
[[abstract]]Traditionally, a major task in building a medical diagnosis expert system is the process...
An important way in order to reduce the complexity of model-based diagnosis is to focus the attentio...
[[abstract]]Traditionally, a major task in building a medical diagnosis expert system is the process...
In several applications of automatic diagnosis and active learning a central problem is the eval- ua...
In medical diagnosis doctors must often determine what medical tests (e.g., X-ray, blood tests) shou...
The paper highlights an approach to solving problems of medical diagnosis. The problems are formulat...
Test selection in diagnosis is a procedure suggesting tests to be executed when trying to answer the...
Finding an effective medical treatment often requires a search by trial and error. Making this searc...
In this thesis, we consider statistical issues in classification for disease using diagnostic testin...
Many real world problems can be expressed as optimisation problems. Solving such problems means to f...
Stochastic optimisers such as Evolutionary Algorithms outperform random search due to their ability ...
Graduation date: 2004In its simplest form, the process of diagnosis is a decision-making process in ...
Determining the most efficient use of diagnostic tests is one of the complex issues facing the medic...
Many real-world scenarios require making informed choices after some sequence of actions that yield ...
This paper presents a prescriptive account of diagnostic problem solving, or diagnosis, in quality a...
[[abstract]]Traditionally, a major task in building a medical diagnosis expert system is the process...
An important way in order to reduce the complexity of model-based diagnosis is to focus the attentio...
[[abstract]]Traditionally, a major task in building a medical diagnosis expert system is the process...
In several applications of automatic diagnosis and active learning a central problem is the eval- ua...
In medical diagnosis doctors must often determine what medical tests (e.g., X-ray, blood tests) shou...
The paper highlights an approach to solving problems of medical diagnosis. The problems are formulat...
Test selection in diagnosis is a procedure suggesting tests to be executed when trying to answer the...
Finding an effective medical treatment often requires a search by trial and error. Making this searc...
In this thesis, we consider statistical issues in classification for disease using diagnostic testin...
Many real world problems can be expressed as optimisation problems. Solving such problems means to f...
Stochastic optimisers such as Evolutionary Algorithms outperform random search due to their ability ...