How to Deal with Visual Misinformation Circulating in the Israel-Hamas War and Other Conflicts

Conditions for Ethical Responsibility
As social media becomes saturated with falsified images of mass violence in the Israel-Hamas war, the Ukraine war and other regions of the globe, individuals should ask what ethical responsibility they bear for their consumption of misinformation and disinformation.

Some might deny that users of digital media bear any such responsibility, since they are merely the passive recipients of content created by others. Philosopher Gideon Rosen claims that when people are passive toward some occurrence, they generally don’t bear ethical responsibility for it. Anyone scrolling the internet will passively encounter hundreds of images and related texts, and it is tempting to assume they bear no responsibility for the images of war and mass violence that they see but only for how they respond to them.

However, users of digital media are not merely passive recipients of falsified images and stories. Instead, they have power to influence the kinds of images that show up on their screens. This means, in turn, that users bear some ethical responsibility for their consumption of visual misinformation and disinformation.

Algorithms and Influence
Digital media platforms deliver content to users on the basis of complex decision-making procedures known as algorithms. Through both online and offline behaviors, users help determine what these algorithms deliver.

It is helpful to distinguish between influence and control. Having control over content would mean either encountering only images and stories that one consciously chooses or having the power to screen out any and all unwanted images. It is typical of digital communications, as philosopher Onora O’Neill has pointed out, that users lack the ability to control content in these ways.

Nevertheless, users can significantly influence the material they encounter in digital spaces. The algorithms by which social media platforms and other digital networks deliver content to users are not fully transparent, but neither are they wholly mysterious. In most cases, they are propelled by users’ past engagement with a platform’s content – a fact reflected in the very name of the “For You” page on TikTok.

Liking, tagging, commenting on or merely continuing to watch images of war and atrocities tends to lead to additional encounters with such content. The potential risks of this algorithmic process became apparent in the mid-2010s, when YouTube’s algorithm was found to be leading users into progressively more extreme videos related to jihadist violence.

Although major social media platforms have community guidelines prohibiting incitement to violence and sharing of graphic content, those prohibitions are difficult to enforce. In the context of some ongoing wars, they have even been relaxed – with Facebook temporarily allowing posts calling for violence against Russian troops and paramilitary groups occupying parts of Ukraine, for example. Taken together, these processes and policies have opened the door to substantial misinformation and disinformation about armed conflict.

Hiding, reporting or simply disengaging with violent content, by contrast, tends to lead to fewer such messages coming in. It may also reduce the odds that such content will reach others. If one knows that a Facebook friend or TikTok content creator has shared false information before, it is possible to block that friend or unfollow that creator.

Because users have these means of influencing the images they receive, it is reasonable to assign them some responsibility for algorithmically generated misinformation and disinformation.

Verifying Images
Altering patterns of engagement with digital content can decrease users’ exposure to misinformation in wartime. But how can users verify the images they do receive before directing others to them?

One simple protocol, promoted by educators and public health groups, is known by the acronym SIFT: stop, investigate, find, trace. The four stages of this protocol ask users to stop, investigate the source of a message, find better coverage, and trace quotes and claims back to their original contexts.

Images, like quotes, can often be traced to their original contexts. Google makes available its reverse image search tool, which allows users to select an image – or parts of it – and find where else it appears online. I found this tool helpful during the first months of the COVID pandemic, when Holocaust photographs were circulated online in posts comparing mask mandates to deportation trains. Of course, as journalists and forensic researchers are quick to point out, such tools can only be applied to a small portion of the images we encounter in our daily lives.

No technique or protocol will give users absolute control of the images they see in wartime or provide complete assurance against sharing false information. But by understanding users’ power to influence content, it may be possible to mitigate these risks and promote a more truthful future.

Paul Morrow is Human Rights Fellow, University of Dayton. This article is published courtesy of The Conversation.