The Thin Line: Turning Small Data into Big Knowledge
Resumen
The Thin Line: Turning Small Data into Big Knowledge introduces the Knowledge Discovery in Serial Measures (KDSM) methodology—a hybrid epistemic framework that bridges statistics and artificial intelligence to extract meaningful, actionable insights from minimal, non-independent datasets in Complex Informal Structure Domains (CISDs). These domains—marked by tacit knowledge, ambiguity, and expert-driven interpretation—defy conventional analytical approaches yet harbor critical understanding in fields such as psychiatry, education, and social policy. KDSM addresses this challenge through three phases: Baseline Analysis (establishing individual pre-intervention profiles), Event Effect Analysis (transforming data into interpretable differences), and Knowledge Production (merging expert-guided clustering with contextual variables). Applied case studies demonstrate KDSM’s capacity to reveal dynamic, non-linear patterns—such as fluctuating cognitive responses during electroconvulsive therapy or distinct temporal trajectories in employability training outcomes—thereby overcoming the limitations of both oversimplified averaging and data-hungry AI models. Beyond its technical innovation, KDSM embodies a philosophical stance aligned with the Cognitive Era: it affirms the value of singularity, the generative power of difference, and the profound knowledge hidden within small data. In an age dominated by big data’s homogenizing impulse, KDSM offers a counterpoint—listening attentively to the minimal, not to amplify volume, but to illuminate essence.
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