Abstract

Automatic fact verification (FV) based on artificial intelligence is considered as a promising approach which can be used to identify misinformation distributed on the web. Even though previous FV using deep learning have made great achievements in single dataset (e.g., FEVER), the trained systems are unlikely to be capable of extracting evidence from heterogeneous web-sources and validating claims in accordance with evidence found on the Internet. Nevertheless, the heterogeneity covers abundant semantic information, which will help FV system identify misinformation in a more accurate way. The current work is the first attempt to make the combination of knowledge graph (KG) and graph neural network (GNN) to enhance the robustness of FV systems for heterogeneous information. As a result, it can be generalized to multi-domain datasets after training on a sufficient single one. To make information update and aggregate well on the collaborative graph, the present study proposes a double graph attention network (DGAT) framework which recursively propagates the embeddings from a node's neighbors to refine the node's embedding as well as applies an attention mechanism to classify the importance of the neighbors. We train and evaluate our system on FEVER, a single and benchmark dataset for FV, and then re-evaluate our system on UKP Snopes Corpus, a new richly annotated corpus for FV tasks on the basis of heterogeneous web sources. According to experimental results, although DGAT has no excellent advantages in a single dataset, it shows outstanding performance in more realistic and multi-domain datasets. Moreover, the current study also provides a feasible method for deep learning to have the ability to infer heterogeneous information robustly.

Highlights

  • With the explosive growth of Internet, fake news has already posed serious threats to the public’s factual judgment and the credibility of the governments

  • Our model has achieved the results in heterogeneous datasets, demonstrating that the reasoning model with knowledge graph can improve the robustness of the fact verification (FV) system on heterogeneous information

  • Compared with the previous research, our double graph attention network (DGAT) has the greatest advantage of completing the natural language inference (NLI) task on heterogeneous web textual information with the help of knowledge graph

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Summary

Introduction

With the explosive growth of Internet, fake news has already posed serious threats to the public’s factual judgment and the credibility of the governments. Recent achievements in scattered information fusion technology and multi-hop reasoning method Language inference) explains this problem, which improve the performance of fact verification (FV) by integrating the entire network information. Natural language inference (NLI) models can use scattered web information comprehensively, which will lead them to obtain sufficient web sources. As shown, a FV system first searches related evidence sentences from one dataset, conducts joint reasoning over these evidences, and aggregates the information to confirm the claim integrity.

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