Abstract
Given the constantly growing proliferation of false claims online in recent years, there has been also a growing research interest in automatically distinguishing false rumors from factually true claims. Here, we propose a general-purpose framework for fully-automatic fact checking using external sources, tapping the potential of the entire Web as a knowledge source to confirm or reject a claim. Our framework uses a deep neural network with LSTM text encoding to combine semantic kernels with task-specific embeddings that encode a claim together with pieces of potentially-relevant text fragments from the Web, taking the source reliability into account. The evaluation results show good performance on two different tasks and datasets: (i) rumor detection and (if) fact checking of the answers to a question in community question answering forums.
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CITATION STYLE
Karadzhov, G., Nakov, P., Màrquez, L., Barrón-Cedeño, A., & Koychev, I. (2017). Fully automated fact checking using external sources. In International Conference Recent Advances in Natural Language Processing, RANLP (Vol. 2017-September, pp. 344–353). Incoma Ltd. https://doi.org/10.26615/978-954-452-049-6_046
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