Human intelligence has been an object of investigation since the beginning of the research on information science to provide artificial agents with human-like decision making skills. This research field has led to the development of algorithms that try to simulate human reasoning. Several theories have been defined to model decisions in the presence of uncer-tain, imprecise and vague information, based on both subjective and qualitative criteria, expressed linguistically. Today, we are at an epochal turning point in which there are no longer at-tempts to reproduce human reasoning by machines, but algorithms are de-signed as networks of interconnected simple computational units learning to take decisions from examples. This data-driven paradigm simulates children learning from observations, so that their behavior evolves by accumulation of experience. Nevertheless, are we sure that purely learning from data is an effective sufficient method, not affected by bias, and that it can lead to fair systems that we can trust? Are we satisfied with completing a task without know-ing "how" it was performed? Are we sure that children don't have, a priori, more complex and structured mechanisms regulating as well as directing their learning ability? The chapter discusses how decison support systems models have changed and what are future perspectives.
What Really Matters is not just Knowing "What", "Where" and "When" but also Knowing "How"
Gloria Bordogna
2023
Abstract
Human intelligence has been an object of investigation since the beginning of the research on information science to provide artificial agents with human-like decision making skills. This research field has led to the development of algorithms that try to simulate human reasoning. Several theories have been defined to model decisions in the presence of uncer-tain, imprecise and vague information, based on both subjective and qualitative criteria, expressed linguistically. Today, we are at an epochal turning point in which there are no longer at-tempts to reproduce human reasoning by machines, but algorithms are de-signed as networks of interconnected simple computational units learning to take decisions from examples. This data-driven paradigm simulates children learning from observations, so that their behavior evolves by accumulation of experience. Nevertheless, are we sure that purely learning from data is an effective sufficient method, not affected by bias, and that it can lead to fair systems that we can trust? Are we satisfied with completing a task without know-ing "how" it was performed? Are we sure that children don't have, a priori, more complex and structured mechanisms regulating as well as directing their learning ability? The chapter discusses how decison support systems models have changed and what are future perspectives.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


