Credit attribution is the task of associating individual parts in a document with their most appropriate class labels. It is an important task with applications to information retrieval and text summarization. When labeled training data is available, traditional approaches for sequence tagging can be used for credit attribution. However, generating such labeled datasets is expensive and time-consuming. In this paper, we present Credit Attribution With Attention (CAWA), a neural-network-based approach, that instead of using sentence-level labeled data, uses the set of class labels that are associated with an entire document as a source of distant-supervision. CAWA combines an attention mechanism with a multilabel classifier into an end-to-en...
Neural network architectures in natural language processing often use attention mechanisms to produc...
Layer-wise Relevance Propagation (LRP) and saliency maps have been recently used to explain the pred...
Document classification has a broad application in the field of sentiment classification, document r...
We propose a novel attention network for document annotation with user-generated tags. The network i...
Automated social text annotation is the task of suggesting a set of tags for shared documents on soc...
Due to the huge availability of documents in digital form, and the deception possibility raise bound...
We present a framework that translates trained neural network's decision making process to a lexicon...
In practice, training language models for individual authors is often expensive because of limited d...
Applications of authorship attribution ‘in the wild ’ [Koppel, M., Schler, J., and Argamon, S. (2010...
Can attention- or gradient-based visualization techniques be used to infer token-level labels for bi...
This paper presents work on using continuous representations for authorship attribution. In contra...
The unprecedented expansion of user-generated content in recent years demands more attempts of infor...
In this paper, it aims to explore authorship attribution through a set of features that are extracte...
In this paper, we explore a set of novel fea-tures for authorship attribution of documents. These fe...
This paper covers a text classification problem: the identification of the author of a text. It is n...
Neural network architectures in natural language processing often use attention mechanisms to produc...
Layer-wise Relevance Propagation (LRP) and saliency maps have been recently used to explain the pred...
Document classification has a broad application in the field of sentiment classification, document r...
We propose a novel attention network for document annotation with user-generated tags. The network i...
Automated social text annotation is the task of suggesting a set of tags for shared documents on soc...
Due to the huge availability of documents in digital form, and the deception possibility raise bound...
We present a framework that translates trained neural network's decision making process to a lexicon...
In practice, training language models for individual authors is often expensive because of limited d...
Applications of authorship attribution ‘in the wild ’ [Koppel, M., Schler, J., and Argamon, S. (2010...
Can attention- or gradient-based visualization techniques be used to infer token-level labels for bi...
This paper presents work on using continuous representations for authorship attribution. In contra...
The unprecedented expansion of user-generated content in recent years demands more attempts of infor...
In this paper, it aims to explore authorship attribution through a set of features that are extracte...
In this paper, we explore a set of novel fea-tures for authorship attribution of documents. These fe...
This paper covers a text classification problem: the identification of the author of a text. It is n...
Neural network architectures in natural language processing often use attention mechanisms to produc...
Layer-wise Relevance Propagation (LRP) and saliency maps have been recently used to explain the pred...
Document classification has a broad application in the field of sentiment classification, document r...