AIMay 9, 2013

On the universality of cognitive tests

arXiv:1305.1991v11 citations
Originality Synthesis-oriented
AI Analysis

This addresses the need for general cognitive assessment methods across a wide range of systems, but it is incremental as it builds on existing notions of universal tests.

The paper investigates the feasibility of universal cognitive tests for diverse systems like humans, animals, and machines, finding that such tests must be adaptive and defined as maximizations of less universal tests across various configurations.

The analysis of the adaptive behaviour of many different kinds of systems such as humans, animals and machines, requires more general ways of assessing their cognitive abilities. This need is strengthened by increasingly more tasks being analysed for and completed by a wider diversity of systems, including swarms and hybrids. The notion of universal test has recently emerged in the context of machine intelligence evaluation as a way to define and use the same cognitive test for a variety of systems, using some principled tasks and adapting the interface to each particular subject. However, how far can universal tests be taken? This paper analyses this question in terms of subjects, environments, space-time resolution, rewards and interfaces. This leads to a number of findings, insights and caveats, according to several levels where universal tests may be progressively more difficult to conceive, implement and administer. One of the most significant contributions is given by the realisation that more universal tests are defined as maximisations of less universal tests for a variety of configurations. This means that universal tests must be necessarily adaptive.

Foundations

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