We propose an intelligent document title classification agent based on a theory of information inference. The information is represented as vectorial spaces computed by a cognitively motivated model, namely Hyperspace Analogue to Language (HAL). A combination heuristic is used to combine a group of concepts into one single combination vector. Information inference can be performed on the HAL spaces via computing information flow between vectors or combination vectors. Based on this theory, a document title is treated as a combination vector by applying the combination heuristic to all the non-stop terms in the title. Two methodologies for learning and assigning categories to document titles are addressed. Experimental results on Reuters-215...
We conduct the first systematic comparison of automated semantic annotation based on either the full...
Our prototype automatic title generation system inspired by statistical machine-translation approach...
In this paper, we present and compare automatically generated titles for machine-translated document...
We propose an intelligent document title classification agent based on a theory of information infe...
We propose an intelligent document title classification agent based on a theory of information infer...
Effective decision making is based on accurate and timely information. However, human decision maker...
Effective decision making is based on accurate and timely information. However, human decision maker...
Effective decision making is based on accurate and timely information. However, human decision maker...
This paper examines the feasibility of discovering "title-like" terms using a decision tree classifi...
In this paper, we show how we can learn to select good words for a document title. We view the probl...
We conduct the first systematic comparison of automated semantic annotation based on either the full...
Automatic titling of text documents is an essential task for several applications (automatic heading...
In this paper, we introduce a method for categoriz-ing digital items according to their topic, only ...
Structured knowledge representations are becoming central to the area of Information Science. Search...
We conduct the first systematic comparison of automated semantic annotation based on either the full...
We conduct the first systematic comparison of automated semantic annotation based on either the full...
Our prototype automatic title generation system inspired by statistical machine-translation approach...
In this paper, we present and compare automatically generated titles for machine-translated document...
We propose an intelligent document title classification agent based on a theory of information infe...
We propose an intelligent document title classification agent based on a theory of information infer...
Effective decision making is based on accurate and timely information. However, human decision maker...
Effective decision making is based on accurate and timely information. However, human decision maker...
Effective decision making is based on accurate and timely information. However, human decision maker...
This paper examines the feasibility of discovering "title-like" terms using a decision tree classifi...
In this paper, we show how we can learn to select good words for a document title. We view the probl...
We conduct the first systematic comparison of automated semantic annotation based on either the full...
Automatic titling of text documents is an essential task for several applications (automatic heading...
In this paper, we introduce a method for categoriz-ing digital items according to their topic, only ...
Structured knowledge representations are becoming central to the area of Information Science. Search...
We conduct the first systematic comparison of automated semantic annotation based on either the full...
We conduct the first systematic comparison of automated semantic annotation based on either the full...
Our prototype automatic title generation system inspired by statistical machine-translation approach...
In this paper, we present and compare automatically generated titles for machine-translated document...