Given a database with missing or uncertain information, our goal is to extract specific information from a large cor- pus such as the Web under limited resources. We formu- late the information gathering task as a series of alterna- tive, resource-consuming actions to choose from and use Re- inforcement Learning to select the best action to perform at each time step. We use temporal difference Q-learning method to train the function that selects these actions, and compare it to an online, error-driven algorithm called Sam- pleRank. We present a system that finds information such as email, job title and department affiliation for the faculty at our university, and show that the learning-based approach accomplishes this task efficiently under...
To successfully embed statistical machine learning models in real world applications, two post-deplo...
To successfully embed statistical machine learning models in real world applications, two post-deplo...
In this paper a reinforcement learning methodology for automatic online algorithm selection is intro...
Abstract—Given a database with missing or uncertain in-formation, our goal is to extract specific in...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
In many scenarios it is desirable to augment existing data with information acquired from an externa...
Consider the task of exploring the Web in order to find pages of a particular kind or on a particula...
We present a general framework for the task of extracting specific information ``on demand\u27\u27 f...
Information extraction (IE) is defined as the identification and extraction of elements of interest,...
Consider the task of exploring the Web in order to find pages of a particular kind or on a particula...
Most successful information extraction systems operate with access to a large collection of document...
Abstract. We present a general framework for the task of extracting specific information “on demand ...
AbstractTo successfully embed statistical machine learning models in real world applications, two po...
Reinforcement learning requires exploration, leading to repeated execution of sub-optimal actions. N...
In many scenarios it is desirable to augment existing data with information acquired from an externa...
To successfully embed statistical machine learning models in real world applications, two post-deplo...
To successfully embed statistical machine learning models in real world applications, two post-deplo...
In this paper a reinforcement learning methodology for automatic online algorithm selection is intro...
Abstract—Given a database with missing or uncertain in-formation, our goal is to extract specific in...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
In many scenarios it is desirable to augment existing data with information acquired from an externa...
Consider the task of exploring the Web in order to find pages of a particular kind or on a particula...
We present a general framework for the task of extracting specific information ``on demand\u27\u27 f...
Information extraction (IE) is defined as the identification and extraction of elements of interest,...
Consider the task of exploring the Web in order to find pages of a particular kind or on a particula...
Most successful information extraction systems operate with access to a large collection of document...
Abstract. We present a general framework for the task of extracting specific information “on demand ...
AbstractTo successfully embed statistical machine learning models in real world applications, two po...
Reinforcement learning requires exploration, leading to repeated execution of sub-optimal actions. N...
In many scenarios it is desirable to augment existing data with information acquired from an externa...
To successfully embed statistical machine learning models in real world applications, two post-deplo...
To successfully embed statistical machine learning models in real world applications, two post-deplo...
In this paper a reinforcement learning methodology for automatic online algorithm selection is intro...