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Erschienen in: Minds and Machines 1-2/2016

01.03.2016

The Central Role of Heuristic Search in Cognitive Computation Systems

verfasst von: Wai-Tat Fu

Erschienen in: Minds and Machines | Ausgabe 1-2/2016

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Abstract

This paper focuses on the relation of heuristic search and level of intelligence in cognitive computation systems. The paper begins with a review of the fundamental properties of a cognitive computation system, which is defined generally as a control system that generates goal-directed actions in response to environmental inputs and constraints. An important property of cognitive computations is the need to process local cues in symbol structures to access and integrate distal knowledge to generate a response. To deal with uncertainties involved in this local-to-distal processing, the system needs to perform heuristic search to locate and integrate the right set of distal structures. The level of intelligence of the system depends critically on the efficiency of the heuristic search process. It is argued that, for a bounded rationality system, the level of intelligence does not depend on how much search it needs to do to accomplish a task. Rather, the level of intelligence depends on how much search it does not need to do to achieve the same level of performance. Examples were discussed to illustrate this idea. The first two examples show how machines that play games like tic-tac-toe and chess rely heavily on the efficiency of the heuristic search algorithm to achieve better performance, demonstrating the relation of heuristic search and intelligence in a bounded rationality system. The second example shows how humans adapt to different information ecologies to perform information search on the Internet and how their performance improves over time, demonstrating how heuristic search can be improved in an adaptive rationality system. The two examples demonstrate how better search control knowledge and representations of task environment can improve the efficiency of heuristic search, thereby improving the intelligence of the system.

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Fußnoten
1
Here, practicality is defined in terms of computational resources required to implement the method that finds the solution.
 
2
Note this is the traditional way rationality is defined, see Todd and Brighton (this issue) for other definitions.
 
3
The intelligence is of course “artificial” as it is based on the understanding of the thermoelectric effect and the engineering effort involved in constructing the thermocouple that converts temperature changes into electric signals.
 
4
Note that “symbols” is broadly defined as representations that relate to other entities. Although the focus is on processing of symbolic structures, it does not imply that this is the only kind of processing. There are other computations that, for example, implement the processing of symbols (e.g., in connectionist networks, in the chemical reactions of neurons, etc), but this is not the level nor the kind of computation that the current analysis focuses on.
 
5
A mathematical characterization of the amount of search by an agent in well-defined problem spaces can be derived by considering the number of operations required to traverse the spaces. A comparison of average number of operations required by a random agent to find a solution can then be used as the baseline to compare how intelligent the agent is. However, such characterization will be beyond the scope of this article.
 
6
Note that this is similar to the choice of cues based on their validities in decision heuristics like “Take-The-Best”.
 
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Metadaten
Titel
The Central Role of Heuristic Search in Cognitive Computation Systems
verfasst von
Wai-Tat Fu
Publikationsdatum
01.03.2016
Verlag
Springer Netherlands
Erschienen in
Minds and Machines / Ausgabe 1-2/2016
Print ISSN: 0924-6495
Elektronische ISSN: 1572-8641
DOI
https://doi.org/10.1007/s11023-015-9374-x

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