To digest tremendous documents efficiently, people often resort to their titles, which normally provide a concise and semantic representation of main text. Some titles however are misleading due to lexical ambiguity or eye-catching intention. The requirement of reference summaries hampers using traditional lexical summarisation evaluation techniques for title evaluation. In this paper we develop semantic title evaluation techniques by comparing a title with other sentences in terms of topic-based similarity with regard to the whole document. We further give a statistical hypothesis test to check whether a title is favourable without any reference summary. As a byproduct, the top similar sentence can be recommended as a candidate for title. ...
The papers examines 1,000 English titles of academic publications in linguistics, dated between 1970...
This paper presents a studyon automatic title generation for scientific articles considering sentenc...
We propose an intelligent document title classification agent based on a theory of information infe...
To digest tremendous documents efficiently, people often resort to their titles, which normally prov...
This paper examines the feasibility of discovering "title-like" terms using a decision tree classifi...
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...
In this paper, we show how we can learn to select good words for a document title. We view the probl...
The title of a document has two roles, to give a compact summary and to lead the reader to read the ...
For (semi-)automated subject indexing systems in digital libraries, it is often more practical to us...
For (semi-)automated subject indexing systems in digital libraries, it is often more practical to us...
Topic Modelling has been applied in many successful applications in data mining, text mining, machin...
Titles are an interesting textual phenomenon which sheds light upon the type of complexity deriving ...
In this paper, we examine the characteristics of titles (average length, proportion of titles with s...
What makes a “good” title for an article, i.e. one which might attract citations in the academic com...
The papers examines 1,000 English titles of academic publications in linguistics, dated between 1970...
This paper presents a studyon automatic title generation for scientific articles considering sentenc...
We propose an intelligent document title classification agent based on a theory of information infe...
To digest tremendous documents efficiently, people often resort to their titles, which normally prov...
This paper examines the feasibility of discovering "title-like" terms using a decision tree classifi...
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...
In this paper, we show how we can learn to select good words for a document title. We view the probl...
The title of a document has two roles, to give a compact summary and to lead the reader to read the ...
For (semi-)automated subject indexing systems in digital libraries, it is often more practical to us...
For (semi-)automated subject indexing systems in digital libraries, it is often more practical to us...
Topic Modelling has been applied in many successful applications in data mining, text mining, machin...
Titles are an interesting textual phenomenon which sheds light upon the type of complexity deriving ...
In this paper, we examine the characteristics of titles (average length, proportion of titles with s...
What makes a “good” title for an article, i.e. one which might attract citations in the academic com...
The papers examines 1,000 English titles of academic publications in linguistics, dated between 1970...
This paper presents a studyon automatic title generation for scientific articles considering sentenc...
We propose an intelligent document title classification agent based on a theory of information infe...