All Content from Business Insider 10月31日 01:03
AI影响维基百科流量,但其数据价值仍高
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近期,维基百科的流量与去年同期相比下降了8%,部分原因是人工智能(AI)的兴起。AI助手和聊天机器人利用维基百科的数据提供信息,但并未将用户引流至维基百科网站。尽管流量下降,维基百科认为其数据价值依然重要,并正通过API订阅等方式与AI公司达成合作,以获取数据使用费。维基百科的非营利模式依赖捐赠和社区贡献,流量下降可能影响其生态健康,但其海量信息和独特的浏览体验仍是AI无法完全替代的优势。

📉 AI工具分流用户,致维基百科流量下滑:近年来,ChatGPT等AI工具能够直接提供信息摘要,减少了用户直接访问维基百科的需求,导致其网站和应用流量较去年同期下降了8%。

💰 数据价值驱动合作,寻求商业化途径:尽管流量减少,维基百科的数据仍是训练大型语言模型(LLMs)的关键资源。维基媒体基金会正通过提供API订阅服务(Wikimedia Enterprise),与AI公司合作,以期获得数据使用费,弥补潜在的捐赠和编辑流失。

🌐 独特浏览体验是核心优势:与AI提供的简洁答案不同,维基百科的浏览体验能够引导用户深入探索相关信息,发现意料之外的知识点,这种“信息迷宫”式的深度学习体验是AI难以完全复制的,也是吸引用户和贡献者回归的关键。

⚖️ 多重挑战并存,但维基百科仍具韧性:除了AI带来的流量冲击,维基百科还面临政治审查的质疑和年轻用户信息获取方式的转变。然而,其每月超过100亿的浏览量和健康的捐赠收入表明其仍具有强大的生命力。

Wikipedia's traffic is down 8%, in part because of AI.

Let's say you were scanning the recent headlines and wanted to know when the East Wing of the White House was constructed.

You might ask ChatGPT. Or maybe you'd just google it.

Either way, you'd get a good answer — although slightly different versions. (Google's AI answers has a snippet from Wikipedia that notes the East Wing was originally constructed in 1902; ChatGPT offers the 1942 two-story version.)

The point is, I don't actually have to visit Wikipedia's website to find out, even if the information is sourced from Wikipedia.

That's starting to become a real concern for people who care about Wikipedia. Traffic is down 8% over the past few months when compared to the same period last year, according to Diff, the blog of Wikipedia's parent organization, the nonprofit Wikimedia. AI-driven chatbots, fed by large language models that hoover up information from sites like Wikipedia, are largely to blame for the decline, Wiki says.

That sounds bad — is it? And what does that mean for the future of Wikipedia? It's so ingrained into the web that it feels too big to fail — but could it?

I asked Marshall Miller, senior director of product at Wikimedia, to make sense of the data. He told me it's certainly true that AI needs Wikipedia, which is one of the most crucial datasets that make up the backbone of the LLMs' knowledge.

"Our mission is to spread free knowledge, and so it is a good thing when that knowledge reaches people through new platforms, whether that's AI chatbots, search engines, or social media," he said. "People need access to reliable, neutral knowledge, and we are happy to see the knowledge reach more people in new ways."

But it also puts the organization in a difficult position when LLMs are using Wikipedia's knowledge base without referring the traffic to the site that can help keep its ecosystem healthy: new contributors, new editors, and — crucially — new donors to the nonprofit Wikimedia Foundation.

Why a drop in traffic matters to Wikipedia

A key difference between a news publisher like Business Insider or The Wall Street Journal seeing a drop in traffic, and Wikipedia seeing a drop, is that the business models are quite different.

Most news outlets run ads or rely on subscriptions, or both. Wikipedia is run by a nonprofit, relying in large part on donations. So for Wikipedia, fewer people visiting it each month means fewer people prompted to donate.

It could also mean fewer contributors and editors to add to and improve on Wikipedia's articles. I'm slightly skeptical of that threat, however. I suspect the kind of person who actually edits a Wikipedia article is a specific type of power user, not a casual drop-in who just wanted one piece of information they obtained by an AI overview.

Also, as the Diff blog post points out, the site's traffic dip isn't only because of AI. There are other trends at play, like younger people getting information from video and skipping traditional web searches altogether.

AI eating into traffic isn't the only concern on the table at the moment for Wiki: A more potentially urgent threat is political. This summer, Republican lawmakers launched an investigation into Wikimedia's alleged left-leaning bias. And Elon Musk, who has accused Wikipedia of having a left-leaning slant, just launched his Grokipedia.

But there are bright spots: Its site and apps still draw more than 10 billion views a month, and the Wikimedia Foundation brought in $170.5 million in donations last year.

And there's a mechanism for the AI companies to actually pay Wikipedia for its information: Wikimedia Enterprise sells an API subscription. (There's a decent question about how much leverage Wikimedia has when a lot of AI companies have already helped themselves to a huge part of its data for free.) But it's not impossible to see a path toward deals. OpenAI, for instance, has made deals with various news publishers, including Business Insider's parent company, Axel Springer.

"Generative AI depends on Wikipedia's human-created knowledge," Miller said. "Wikipedia is one of the highest-quality datasets used in training LLMs, and studies have shown that the outputs from AI models are significantly lower quality when Wikipedia is not used as a dataset."

How you might encounter Wikipedia when using AI

I've been thinking about the ways that people might encounter Wikipedia information in an AI setting, vs. actually browsing Wikipedia itself. And I think there are some big differences — which should be good news for Wikipedia.

I can attest that a lot of the factual-type questions I might ask ChatGPT are being sourced from Wikipedia, and I bet that's also the case with a lot of the homework-type questions that younger users are using AI for. "What was the cause of the 30 Years' War?" is a great question for ChatGPT. It'll give you a reasonable and concise answer. (Kids, please do your homework yourself.)

But consider instead what you find on the Wikipedia page for the Thirty Years' War. So many interesting blue words to click on! So many names and places and things! You could get lost there for weeks.

We all love a good Wikipedia rabbit hole to get sucked down — that's a very different experience from wanting a quick answer. It's like sitting down to a meal at a restaurant vs. microwaving a frozen burrito. I say this as someone who eats a fair amount of frozen burritos — sometimes you just want the quick and easy thing! The two versions coexist!

That experience — the browsing experience where you absorb information you didn't even think to ask for — is what sets Wikipedia apart from an AI answer of a simple fact. And that's what the people who donate or edit keep coming back for.

Read the original article on Business Insider

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