The ongoing astounding growth of text data has created an enormous need for fast and efficient Text Mining algorithms. However, the sparsity and high dimensionality of text data present great challenges for representing the semantics of natural language text. Traditional approaches for document representation are mostly based on the Vector Space (VSM) Model which takes a document as an unordered collection of words and only document-level statistical information is recorded (e.g., document frequency, inverse document frequency). Due to the lack of capturing semantics in texts, for certain tasks, especially fine-grained information discovery applications, such as mining relationships between concepts, VSM demonstrates its inherent limitation...
AbstractWe propose a method for computing semantic relatedness between words or texts by using knowl...
There are many opportunities to improve the interactivity of information retrieval systems beyond th...
Extracting the semantic relatedness of terms is an important topic in several areas, including data...
Semantic association computation is the process of automatically quantifying the strength of a seman...
Semantic association computation is the process of automatically quantifying the strength of a seman...
Semantic association computation is the process of automatically quantifying the strength of a seman...
This paper shows how Wikipedia and the semantic knowledge it contains can be exploited for document ...
This paper shows how Wikipedia and the semantic knowledge it contains can be exploited for document ...
The process whereby inferences are made from textual data is broadly referred to as text mining. In ...
The process whereby inferences are made from textual data is broadly referred to as text mining. In ...
This paper shows how Wikipedia and the semantic knowledge it contains can be exploited for document ...
This thesis focuses on the design of algorithms for the extraction of knowledge (in terms of entitie...
Wikipedia provides a semantic network for computing semantic relatedness in a more structured fashio...
Wikipedia has become a high coverage knowledge source which has been used in many research areas suc...
Abstract. The Wikipedia is the largest online collaborative knowledge sharing system, a free encyclo...
AbstractWe propose a method for computing semantic relatedness between words or texts by using knowl...
There are many opportunities to improve the interactivity of information retrieval systems beyond th...
Extracting the semantic relatedness of terms is an important topic in several areas, including data...
Semantic association computation is the process of automatically quantifying the strength of a seman...
Semantic association computation is the process of automatically quantifying the strength of a seman...
Semantic association computation is the process of automatically quantifying the strength of a seman...
This paper shows how Wikipedia and the semantic knowledge it contains can be exploited for document ...
This paper shows how Wikipedia and the semantic knowledge it contains can be exploited for document ...
The process whereby inferences are made from textual data is broadly referred to as text mining. In ...
The process whereby inferences are made from textual data is broadly referred to as text mining. In ...
This paper shows how Wikipedia and the semantic knowledge it contains can be exploited for document ...
This thesis focuses on the design of algorithms for the extraction of knowledge (in terms of entitie...
Wikipedia provides a semantic network for computing semantic relatedness in a more structured fashio...
Wikipedia has become a high coverage knowledge source which has been used in many research areas suc...
Abstract. The Wikipedia is the largest online collaborative knowledge sharing system, a free encyclo...
AbstractWe propose a method for computing semantic relatedness between words or texts by using knowl...
There are many opportunities to improve the interactivity of information retrieval systems beyond th...
Extracting the semantic relatedness of terms is an important topic in several areas, including data...