Questions
STATISTICAL DEEP LEARNING DONE_2025 Mid-term Close-book Exam
Multiple fill-in-the-blank
Fill in Blanks: Choose from Models 1~3: Which model will corresponding to Figure A: [Fill in the blank], ; Which model will corresponding to Figure B: [Fill in the blank], ; Which model will corresponding to Figure C: [Fill in the blank], ; Which model will be less influenced by the sampled data: [Fill in the blank], . Choose among small or large: Comparing among Figures A, B, and C: Figure A shows potentially [Fill in the blank], bias and [Fill in the blank], variance.
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Step-by-Step Analysis
The question asks us to fill in several blanks by assigning models and descriptors to Figures A, B, and C, as well as identifying which model is less influenced by the sampled data. I will evaluate each option group step by step.
First, consider the blanks for the figures linked to models:
- For Figure A: The options include '1', 'model 1', and 'Model 1'. These three options refer to the same underlying model label, just written in different formats (numeric vs. textual with capitalization). The content suggests a mapping where a specific model is associated with Figure A. In typical multiple-choice formatting, the standardized label would be 'Model 1' (capitalization matters for formal labeling), while 'model 1' is a lowercase variant and '1' is the numeric shorthand. The key distinction is between referring to the same model in different textual forms rather than indicating a different model altogether.
- For Figure B: The options again include '2', 'model 2', and 'Model 2'. The same reasoning applies: they all denote the same second model, just written with different casing or as a number. The intended, clean mapping would likely b......Login to view full explanationLog in for full answers
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