CLIRLGNov 16, 2021

WikiContradiction: Detecting Self-Contradiction Articles on Wikipedia

arXiv:2111.08543v126 citations
Originality Incremental advance
AI Analysis

This work addresses the issue of low-quality articles for Wikipedia users and fact-checking applications, but it is incremental as it builds on existing contradiction detection methods.

The paper tackles the problem of detecting self-contradiction articles on Wikipedia by proposing a new task and dataset, and introduces the Pairwise Contradiction Neural Network (PCNN) model, which achieves promising performance in identifying such articles and highlighting contradictory sentence pairs.

While Wikipedia has been utilized for fact-checking and claim verification to debunk misinformation and disinformation, it is essential to either improve article quality and rule out noisy articles. Self-contradiction is one of the low-quality article types in Wikipedia. In this work, we propose a task of detecting self-contradiction articles in Wikipedia. Based on the "self-contradictory" template, we create a novel dataset for the self-contradiction detection task. Conventional contradiction detection focuses on comparing pairs of sentences or claims, but self-contradiction detection needs to further reason the semantics of an article and simultaneously learn the contradiction-aware comparison from all pairs of sentences. Therefore, we present the first model, Pairwise Contradiction Neural Network (PCNN), to not only effectively identify self-contradiction articles, but also highlight the most contradiction pairs of contradiction sentences. The main idea of PCNN is two-fold. First, to mitigate the effect of data scarcity on self-contradiction articles, we pre-train the module of pairwise contradiction learning using SNLI and MNLI benchmarks. Second, we select top-K sentence pairs with the highest contradiction probability values and model their correlation to determine whether the corresponding article belongs to self-contradiction. Experiments conducted on the proposed WikiContradiction dataset exhibit that PCNN can generate promising performance and comprehensively highlight the sentence pairs the contradiction locates.

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The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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