The article suggests that fake news detection is challenging due to the algorithm’s reliance on visual features of digital content being presented in a certain way. This leads to ambiguous, misleading, or often unexplained detection results. The article does not provide more detailed explanations of how fake news is generated or how it can be explained. Therefore, it primarily points out known issues without offering new insights or methodologies.

The article implies that the detection of fake news and the explanation of its effects cannot be fully understood due to the inherent ambiguity in the visual features used for detection. It emphasizes the importance of understanding how visual features, such as content, style, and semantic aspects, contribute to the detection results, particularly in cases where features are ambiguous or misaligned with the expected detection outcome.

In summary, while the article highlights certain known insights and limitations in detecting fake news and understanding its causes, it does not provide actionable methods or methodologies to better explain or detect fake news.

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