In practice, training language models for individual authors is often expensive because of limited data resources. In such cases, Neural Network Language Models (NNLMs), generally outperform the traditional non-parametric N-gram models. Here we investigate the performance of a feed-forward NNLM on an authorship attribution problem, with moderate author set size and relatively limited data. We also consider how the text topics impact performance. Compared with a well-constructed N-gram baseline method with Kneser-Ney smoothing, the proposed method achieves nearly 2.5% reduction in perplexity and increases author classification accuracy by 3.43% on average, given as few as 5 test sentences. The performance is very competitive with the state o...
This paper explores the use of neural networks in author classification. Also exploring the effect o...
Attributing authorship of documents with unknown creators has been studied extensively for natural l...
This paper proposes a means of using an artificial neural network to distinguish the authors of para...
A majority of the previous works on authorship attribution make several assumptions while designing ...
This paper covers a text classification problem: the identification of the author of a text. It is n...
Applications of authorship attribution ‘in the wild ’ [Koppel, M., Schler, J., and Argamon, S. (2010...
This paper presents work on using continuous representations for authorship attribution. In contra...
We use a convolutional neural network to perform authorship identification on a very homogeneous dat...
We present a novel method for computer-assisted authorship attribution based on characterlevel n-gra...
We present a novel method for computer-assisted authorship attribution based on character-level n-gr...
The relative frequencies of letter pairs within text samples can be used in authorship studies. Neur...
This paper proposes a means of using a multilayered feedforward neural network to identify the autho...
The world is generating more and more network data in many different areas (e.g., sensor networks, s...
Techniques for identifying the author of an unattributed document can be applied to problems in info...
Feature extraction is a common problem in statistical pattern recognition. It refers to a process wh...
This paper explores the use of neural networks in author classification. Also exploring the effect o...
Attributing authorship of documents with unknown creators has been studied extensively for natural l...
This paper proposes a means of using an artificial neural network to distinguish the authors of para...
A majority of the previous works on authorship attribution make several assumptions while designing ...
This paper covers a text classification problem: the identification of the author of a text. It is n...
Applications of authorship attribution ‘in the wild ’ [Koppel, M., Schler, J., and Argamon, S. (2010...
This paper presents work on using continuous representations for authorship attribution. In contra...
We use a convolutional neural network to perform authorship identification on a very homogeneous dat...
We present a novel method for computer-assisted authorship attribution based on characterlevel n-gra...
We present a novel method for computer-assisted authorship attribution based on character-level n-gr...
The relative frequencies of letter pairs within text samples can be used in authorship studies. Neur...
This paper proposes a means of using a multilayered feedforward neural network to identify the autho...
The world is generating more and more network data in many different areas (e.g., sensor networks, s...
Techniques for identifying the author of an unattributed document can be applied to problems in info...
Feature extraction is a common problem in statistical pattern recognition. It refers to a process wh...
This paper explores the use of neural networks in author classification. Also exploring the effect o...
Attributing authorship of documents with unknown creators has been studied extensively for natural l...
This paper proposes a means of using an artificial neural network to distinguish the authors of para...