Consider the task of exploring the Web in order to find pages of a particular kind or on a particular topic. This task arises in the construction of search engines and Web knowledge bases. This paper argues that the creation of efficient web spiders is best framed and solved by reinforcement learning, a branch of machine learning that concerns itself with optimal sequential decision making. One strength of reinforcement learning is that it provides a formalism for measuring the utility of actions that give benefit only in the future. We present an algorithm for learning a value function that maps hyperlinks to future discounted reward using a naive Bayes text classifier. Experiments on two real-world spidering tasks show a threefold improve...
Many real-world problems can be reduced to combinatorial optimization on a graph, where the subset o...
Many real-world problems can be reduced to combinatorial optimization on a graph, where the subset o...
Abstract. In this paper we compare our selection based learning algo-rithm with the reinforcement le...
Consider the task of exploring the Web in order to find pages of a particular kind or on a particula...
International audienceFocused crawling aims at collecting as many Web pages relevant to a target top...
Testing web applications through the GUI can be complex and time-consuming, as it involves checking ...
Given a database with missing or uncertain information, our goal is to extract specific information ...
A focused crawler aims at discovering as many web pages relevant to a target topic as possible, whil...
We propose a novel deep web crawling framework based on reinforcement learning. The crawler is regar...
We propose a method to teach an automated agent to learn how to search for multi-hop paths of relati...
Machine learning plays a pivotal role in artificial intelligence, allowing machines to mimic human l...
Domain-specific search engines are growing in popularity because they offer increased accuracy and e...
Modern-day navigation relies on pathfinding algorithms to determine the shortest distance between tw...
This thesis describes reinforcement learning (RL) methods which can solve sequential decision makin...
Reinforcement learning (RL) was originally proposed as a framework to allow agents to learn in an ...
Many real-world problems can be reduced to combinatorial optimization on a graph, where the subset o...
Many real-world problems can be reduced to combinatorial optimization on a graph, where the subset o...
Abstract. In this paper we compare our selection based learning algo-rithm with the reinforcement le...
Consider the task of exploring the Web in order to find pages of a particular kind or on a particula...
International audienceFocused crawling aims at collecting as many Web pages relevant to a target top...
Testing web applications through the GUI can be complex and time-consuming, as it involves checking ...
Given a database with missing or uncertain information, our goal is to extract specific information ...
A focused crawler aims at discovering as many web pages relevant to a target topic as possible, whil...
We propose a novel deep web crawling framework based on reinforcement learning. The crawler is regar...
We propose a method to teach an automated agent to learn how to search for multi-hop paths of relati...
Machine learning plays a pivotal role in artificial intelligence, allowing machines to mimic human l...
Domain-specific search engines are growing in popularity because they offer increased accuracy and e...
Modern-day navigation relies on pathfinding algorithms to determine the shortest distance between tw...
This thesis describes reinforcement learning (RL) methods which can solve sequential decision makin...
Reinforcement learning (RL) was originally proposed as a framework to allow agents to learn in an ...
Many real-world problems can be reduced to combinatorial optimization on a graph, where the subset o...
Many real-world problems can be reduced to combinatorial optimization on a graph, where the subset o...
Abstract. In this paper we compare our selection based learning algo-rithm with the reinforcement le...