06-reference

commoncog reduce noise not cognitive biases

Sat Apr 18 2026 20:00:00 GMT-0400 (Eastern Daylight Time) ·reference ·source: Commoncog ·by Cedric Chin

“Reduce Noise, Not Cognitive Biases” — @CedricChin

Why this is in the vault

Cedric’s forecasting series — primarily concerned with noise reduction over bias correction (the Kahneman/Sibony/Sunstein argument). Relevant to how RDCO frames quality in agent deployments: most failures are noise (inconsistent execution across runs), not bias (wrong target).

The core argument

Operationalisation of the Noise book’s core claim: bias-correction has been the dominant prescription in the rationalist literature, but noise reduction (consistent judgment across similar cases) is both higher-leverage and more tractable. Practical prescription: standardise your decision process, then let bias-correction be the second-pass refinement.

Mapping against Ray Data Co

Direct mapping to agent-eval methodology: when we run multiple deployments of the same agent, the variance across runs IS the metric. Most LLM failure modes are high-noise low-bias — the agent is roughly right on average but wildly inconsistent. This frames Sanity Check posts on eval design and our client-facing ‘agent reliability audit’ offer.


Source: Reduce Noise, Not Cognitive Biases by Cedric Chin (Commoncog). 4214 words. Filed 2026-04-19 as part of Start-Here + Business-Expertise-Triad backfill cohort.