Why is it challenging to apply diffusion models to text generation?
A.
Because text generation does not require complex models
B.
Because text is not categorical
C.
Because text representation is categorical unlike images
D.
Because diffusion models can only produce images
The Answer Is:
C
This question includes an explanation.
Explanation:
Comprehensive and Detailed In-Depth Explanation:
Diffusion models, widely used for image generation, iteratively denoise data from noise to a structured output. Images are continuous (pixel values), while text is categorical (discrete tokens), making it challenging to apply diffusion directly to text, as the denoising process struggles with discrete spaces. This makes Option C correct. Option A is false—text generation can benefit from complex models. Option B is incorrect—text is categorical. Option D is wrong, as diffusion models aren’t inherently image-only but are better suited to continuous data. Research adapts diffusion for text, but it’s less straightforward.
OCI 2025 Generative AI documentation likely discusses diffusion models under generative techniques, noting their image focus.
1z0-1127-25 PDF/Engine
Printable Format
Value of Money
100% Pass Assurance
Verified Answers
Researched by Industry Experts
Based on Real Exams Scenarios
100% Real Questions
Get 65% Discount on All Products,
Use Coupon: "ac4s65"