| Literature DB >> 35707550 |
Antonio Lieto1,2.
Abstract
In this article, I argue that the artificial components of hybrid bionic systems do not play a direct explanatory role, i.e., in simulative terms, in the overall context of the systems in which they are embedded in. More precisely, I claim that the internal procedures determining the output of such artificial devices, replacing biological tissues and connected to other biological tissues, cannot be used to directly explain the corresponding mechanisms of the biological component(s) they substitute (and therefore cannot be used to explain the local mechanisms determining an overall biological or cognitive function replicated by such bionic models). I ground this analysis on the use of the Minimal Cognitive Grid (MCG), a novel framework proposed in Lieto (Cognitive design for artificial minds, 2021) to rank the epistemological and explanatory status of biologically and cognitively inspred artificial systems. Despite the lack of such a direct mechanistic explanation from the artificial component, however, I also argue that the hybrid bionic systems can have an indirect explanatory role similar to the one played by some AI systems built by using an overall structural design approach (but including the partial adoption of functional components). In particular, the artificial replacement of part(s) of a biological system can provide i) a local functional account of that part(s) in the context of the overall functioning of the hybrid biological-artificial system and ii) global insights about the structural mechanisms of the biological elements connected to such artificial devices.Entities:
Keywords: computational explanation; computational models of cognition; computational models of mind; minimal cognitive grid; simulative method; synthetic method
Year: 2022 PMID: 35707550 PMCID: PMC9189370 DOI: 10.3389/frobt.2022.888199
Source DB: PubMed Journal: Front Robot AI ISSN: 2296-9144
The three dimensions of the Minimal Cognitive Grid individually analyzed with respect to their epistemic goal and the types of allowed evaluations.
| Epistemic goal | Quantitative evaluation | Qualitative evaluation | Graded evaluation | Subjective evaluation | |
|---|---|---|---|---|---|
| Functional/structural ratio | Evaluating the biological/cognitive adequacy of the artificial system | Yes | Yes | Yes | No |
| Generality | Evaluating the transferability of a given system/model to different tasks and biological/cognitive functions | Yes | Yes | Yes | No |
| Performance match | Comparing the output of the artificial system with the natural one(s) in terms of i) results, ii) errors, and iii) response times | Yes | Yes | Yes | No |
FIGURE 1Pictorial representation of one of the experiments described in Carmena et al. (2003), where the cursor is “brain controlled” via the decoder.
Synthetic table concerning the analysis with the MCG of the local explanatory power of the different bionic systems adopted in the simulation vs. stimulation methodologies.
| Functional/structural ratio | Generality | Performance-match | |
|---|---|---|---|
| Lamprey study | Not applicable (functional design) | No | Functional replication |
| Monkey study (brain control) | Not applicable (functional design) | No | No match |
Synthetic table concerning the analysis with the MCG of the two global explanatory powers of the different bionic systems adopted in the simulation vs. stimulation methodologies.
| Functional/structural ratio | Generality | Performance-match | |
|---|---|---|---|
| Simulative methodology lamprey study | Applicable | No | Accuracy performance |
| Simulative methodology brain control monkey study | Applicable | No | No match |