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Experiments with Convolutional Neural Networks for Multi-Label Authorship Attribution

Dainis Boumber ([email protected]), Yifan Zhang ([email protected]), Arjun Mukherjee ([email protected])

University of Houston

Publication pending review.

Description

We explore the use of Convolutional Neural Networks (CNNs) for multi-label Authorship Attribution (AA) problems and propose a CNN specifically designed for such tasks. By treating smaller documents as sentences and averaging the author probability distributions at sentence level for the longer documents, our design adapts to single-label datasets and various document sizes, retaining the capabilities of a traditional CNN. As a part of this work, we also create and make available to the public a multi-label Authorship Attribution dataset (MLPA-400) , consisting of 400 scientific publications by 20 authors from the field of Machine Learning. Experimental results demonstrate that our method outperforms several state-of-the-art models on the proposed task.

Multi-label CNN

Prerequisits: scikit-learn, tensoflow v1.0, python3

Run python aa.py for a sample set of experiments. Any additional data is to be placed under datahelpers/data (default, can be changed)

MLPA-400 dataset

Machine Learning Papers' Authorship (MPLA-400) dataset contains 20 publications by each of the top-20 authors in ML, for the total of 400.

The data is located in ./ml_dataset directory. You can also obtain it as a tarball from

https://drive.google.com/open?id=0B_LjdXSWGw1YR2dIek95bGFfZEE

Labels.csv contains the ground truths in the following format: ,<author_1>,...<author_20>\n is plain text and <author_n> is a digit 0 or 1 indicating whether this author is one of the co-authors. The first row is the header row.

See MLPA-400 for more details.

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