QCM : Foundations of Intelligent Systems and Ethical AI — 5 questions

Questions et réponses du QCM

1. How do the knowledge base and inference engine in expert systems architecture fundamentally differ from each other?

The inference engine stores the knowledge base and retrieves information, whereas the knowledge base applies reasoning rules.
The knowledge base stores rules and facts, while the inference engine applies logical reasoning to these facts.
The inference engine stores expertise and facts, while the knowledge base applies logical rules to these facts.
The knowledge base processes data to generate new rules, whereas the inference engine stores the expert's knowledge.

The knowledge base stores rules and facts, while the inference engine applies logical reasoning to these facts.

Explication

The knowledge base stores expertise, facts, and rules, while the inference engine applies logical reasoning to this stored knowledge to simulate decision-making, as described in the source.

2. What is the primary purpose of analyzing language at different NLP levels such as phonological, morphological, lexical, syntactic, semantic, and pragmatic?

To build a hierarchical understanding of language structure and meaning
To identify grammatical errors in sentences
To improve speech synthesis quality
To translate text from one language to another

To build a hierarchical understanding of language structure and meaning

Explication

The hierarchy of NLP analysis levels—from phonology to pragmatics—serves to build a comprehensive understanding of language by examining sounds, word structure, meaning, and context. This layered approach allows NLP systems to interpret language accurately in various applications.

3. What is computer vision primarily concerned with?

Creating 3D models from images
Training robots to perform tasks
Processing images to interpret visual data
Generating synthetic images for simulations

Processing images to interpret visual data

Explication

Computer vision is primarily concerned with processing images to extract meaningful information and enable machines to interpret visual data. The source states that it involves techniques such as filtering and feature extraction to analyze images effectively.

4. What specific AI technique is mentioned as improving fault diagnosis in VLSI testing according to the source?

Supervised learning for fault detection
Natural language processing for circuit analysis
Machine learning for fault prediction
Reinforcement learning for circuit optimization

Machine learning for fault prediction

Explication

The source explicitly states that 'machine learning and deep learning techniques significantly improve fault diagnosis accuracy and speed,' indicating that machine learning is the AI technique used for fault prediction in VLSI testing.

5. What is a key property that responsible AI frameworks aim to promote?

Fairness, transparency, and accountability
Speed of decision-making
Cost-efficiency in deployment
Maximization of automation

Fairness, transparency, and accountability

Explication

Responsible AI frameworks are explicitly designed to promote fairness, transparency, and accountability in AI systems, ensuring ethical development and deployment. These qualities are fundamental to responsible AI, as stated in the source content.

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Expert System Architecture — components?

Knowledge base and inference engine

Knowledge Base — role?

Stores expert’s facts and rules

Inference Engine — function?

Applies logic to deduce decisions

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