|
|
|
|
|
by nataliste
302 days ago
|
|
The author's argument is built on fallacies that always pop up in these kinds of critiques. The "summary vs shortening" distinction is moving the goalposts. They makes the empirical claim that LLMs fail at summarizing novel PDFs without any actual evidence. For a model trained on a huge chunk of the internet, the line between "reworking existing text" and "drawing on external context" is so blurry it's practically meaningless. Similarly, can we please retire the ELIZA and Deep Blue analogies? Comparing a modern transformer to a 1960s if-then script or a brute-force chess engine is a category error. It's a rhetorical trick to make LLMs seem less novel than they actually are. And blaming everything on anthropomorphism is an easy out. It lets you dismiss the model's genuinely surprising capabilities by framing it as a simple flaw in human psychology. The interesting question isn't that we anthropomorphize, but why this specific technology is so effective at triggering that response from humans. The whole piece basically boils down to: "If we define intelligence in a way that is exclusively social and human, then this non-social, non-human thing isn't intelligent." It's a circular argument. |
|