DCS-T-709-AIES-2024 Main
Link to Lecture Notes
Empirical Learning | When information comes from measurements in the physical world it is “empirical evidence”. 'Empirical learning' is thus learning based on empirical data. |
Experience-Based Learning | Learning is the acquisition of knowledge for particular purposes. When this acquisition happens via interaction with an environment it is experience-based. |
Causation | Knowledge of causation is a fundamental concept in building reliable information models (knowledge) from experience. |
Explanation Depends On Causation | It is impossible to explain anything in any useful way without referring to general causal relations. |
Why Explanation Matters | If a controller does something we don't want it to repeat, it needs to be able to explain why it did what it did. If it can't, it means it - and we - can never find out why it did that, whether it was caused by a design flaw, and under what conditions it might do it again. |
Trustworthiness | The more reliably it does its job (and nothing else) and does it well, the more trustworthy it is. The more trustworthy it is, the better it is suited to be designed to follow ethical rules and regulations. |
Achieving Trustworthiness | Requires reliability, and predictability at multiple levels of operation. For autonomous machines, this requires them to know reliable causal relations. |
Cognitive Autonomy | The ability of an agent to act and think independently. Implies that the machine “does it alone”. Refers to the mental (control-) independence of agents - the more independent they are (of their designers, of outside aid, etc.) the more autonomous they are. Systems without it could hardly be considered to have general intelligence. |
Moral Autonomy | Cannot be assumed for any autonomous machine if that machine does not understand the side effects of its own actions. |
Conclusion | Moral autonomy in machines must rely on understanding, which relies on reasoning and knowledge of cause-effect relations, which relies on autonomous learning of complex phenomena. |
2024©K.R.Thórisson