It could be something like that (hint: they already deployed an offline neural network in Firefox with which you can translate web pages), and the idea would be to detect AI-generated content.
Well I hope they’re going to do better at detecting AI content than anyone ever has before because nobody’s done it well at all so far.
There’s an inherent problem here that AI produces results similar to what it’s trained on and it was not trained on robotic input it was trained on natural human language online.
IDK chief. It seems like one of those things that are hard to do in theory as you said, but relatively easy in practice.
I mean just about any human who has played a bit with ChatGPT nowadays is able to identify ChatGPT generated paragraphs within a few words. I don’t suppose it would be much harder for a machine.
Therein lies the issue though. If its not hard to detect, then right after that, its hard to detect again, because the previous fix has been trained out/around. The harder we work to develop detection, the harder we work to ensure detection avoidance is advanced in parallel.
Elsewhere in this thread someone explained that its just integrating FakeSpot into the browser, which uses basic email spam detection techniques to detect fake reviews by analyzing how the reviewer posts. Is there a set schedule they post reviews by, what else have they reviewed, how new is the account, etc. A 2 day old account with 20 reviews would be an obvious source of fake reviews for example
It could be something like that (hint: they already deployed an offline neural network in Firefox with which you can translate web pages), and the idea would be to detect AI-generated content.
Well I hope they’re going to do better at detecting AI content than anyone ever has before because nobody’s done it well at all so far.
There’s an inherent problem here that AI produces results similar to what it’s trained on and it was not trained on robotic input it was trained on natural human language online.
IDK chief. It seems like one of those things that are hard to do in theory as you said, but relatively easy in practice.
I mean just about any human who has played a bit with ChatGPT nowadays is able to identify ChatGPT generated paragraphs within a few words. I don’t suppose it would be much harder for a machine.
Therein lies the issue though. If its not hard to detect, then right after that, its hard to detect again, because the previous fix has been trained out/around. The harder we work to develop detection, the harder we work to ensure detection avoidance is advanced in parallel.
Elsewhere in this thread someone explained that its just integrating FakeSpot into the browser, which uses basic email spam detection techniques to detect fake reviews by analyzing how the reviewer posts. Is there a set schedule they post reviews by, what else have they reviewed, how new is the account, etc. A 2 day old account with 20 reviews would be an obvious source of fake reviews for example