226k views
3 votes
How do you determine whether to stick with an empty model or a complex model?

1) Based on the complexity of the problem
2) Based on the available data
3) Based on the desired accuracy
4) Based on the computational resources

1 Answer

3 votes

Final answer:

When determining whether to stick with an empty model or a complex model, several factors should be considered, including the complexity of the problem, available data, desired accuracy, and computational resources.

Step-by-step explanation:

When determining whether to stick with an empty model or a complex model, there are several factors to consider:

  1. Based on the complexity of the problem: If the problem is relatively simple and can be well understood without the need for a complex model, then an empty model may be sufficient.
  2. Based on the available data: If there is a lot of relevant data available that can be incorporated into a complex model, then it may be more accurate and reliable than an empty model.
  3. Based on the desired accuracy: If a high level of accuracy is required in the analysis or prediction, a complex model may be more appropriate.
  4. Based on computational resources: Complex models may require more computational resources to run, so the availability of computational power should also be taken into account.

Ultimately, the choice between an empty model and a complex model should be made based on a balance of these factors and the specific requirements of the problem at hand.

User Steven Graham
by
9.6k points

Related questions

asked Apr 28, 2024 199k views
Oleg Yablokov asked Apr 28, 2024
by Oleg Yablokov
7.5k points
1 answer
0 votes
199k views
asked Feb 5, 2024 82.5k views
Shawn Wernig asked Feb 5, 2024
by Shawn Wernig
8.2k points
1 answer
5 votes
82.5k views