Moreover, in this paradigm, forms of hidden reasoning seem likely to emerge: in multi-step reasoning, for example, the model might find it efficient to compress backtracking or common reasoning cues into cryptic tokens (e.g., “Hmmm”) as a kind of shorthand to encode arbitrarily dense or unclear information. This is especially true under financial pressures to compress/shorten the Chains-of-Thought, thus allowing models to perform potentially long serial reasoning outside of human/AI oversight.
Moreover, in this paradigm, forms of hidden reasoning seem likely to emerge: in multi-step reasoning, for example, the model might find it efficient to compress backtracking or common reasoning cues into cryptic tokens (e.g., “Hmmm”) as a kind of shorthand to encode arbitrarily dense or unclear information. This is especially true under financial pressures to compress/shorten the Chains-of-Thought, thus allowing models to perform potentially long serial reasoning outside of human/AI oversight.