In this paper, we systematically study the problem of dataless hierarchical text classification. Unlike standard text classification schemes that rely on supervised training, dataless classification depends on understanding the labels of the sought after categories and requires no labeled data. Given a collection of text documents and a set of labels, we show that understanding the labels can be used to accurately categorize the documents. This is done by embedding both labels and documents in a semantic space that allows one to compute meaningful semantic similarity between a document and a potential label. We show that this scheme can be used to support accurate multiclass classification without any supervision. We study several semantic ...
Text categorization is the classification to assign a text document to an appropriate category in a ...
growing interest due to the widespread proliferation of topic hierarchies for text documents. The wo...
The need to classify text documents within topic hierarchies has given rise to techniques that use t...
Manually labeling documents for training a text classifier is expensive and time-consuming. Moreover...
Hierarchical supervised classifiers are highly demanding in terms of labelled examples, because the ...
Managing the hierarchical organization of data is starting to play a key role in the knowledge manag...
Organizing textual content into broad labels is one of the most basic tasks that some people carry o...
The management of hierarchically organized data is starting to play a key role in the knowledge mana...
he management of hierarchically organized data is starting to play a key role in the knowledge manag...
In this paper, we evaluate the Lbl2Vec approach for unsupervised text document classification. Lbl2V...
Hierarchical supervised classifiers are highly demanding in terms of labelled examples, because the...
Manually labeling documents for training a text classifier is expensive and time-consuming. Moreover...
We address the problem of unsupervised classification of documents into a given hierarchy of concept...
The multi-label text categorization is supervised learning, where a document is associated with mult...
t is often the case that collections of documents are annotated with hierarchically-structured conce...
Text categorization is the classification to assign a text document to an appropriate category in a ...
growing interest due to the widespread proliferation of topic hierarchies for text documents. The wo...
The need to classify text documents within topic hierarchies has given rise to techniques that use t...
Manually labeling documents for training a text classifier is expensive and time-consuming. Moreover...
Hierarchical supervised classifiers are highly demanding in terms of labelled examples, because the ...
Managing the hierarchical organization of data is starting to play a key role in the knowledge manag...
Organizing textual content into broad labels is one of the most basic tasks that some people carry o...
The management of hierarchically organized data is starting to play a key role in the knowledge mana...
he management of hierarchically organized data is starting to play a key role in the knowledge manag...
In this paper, we evaluate the Lbl2Vec approach for unsupervised text document classification. Lbl2V...
Hierarchical supervised classifiers are highly demanding in terms of labelled examples, because the...
Manually labeling documents for training a text classifier is expensive and time-consuming. Moreover...
We address the problem of unsupervised classification of documents into a given hierarchy of concept...
The multi-label text categorization is supervised learning, where a document is associated with mult...
t is often the case that collections of documents are annotated with hierarchically-structured conce...
Text categorization is the classification to assign a text document to an appropriate category in a ...
growing interest due to the widespread proliferation of topic hierarchies for text documents. The wo...
The need to classify text documents within topic hierarchies has given rise to techniques that use t...