Difference between revisions of "...predict values"

From
Jump to: navigation, search
m
m
 
(One intermediate revision by the same user not shown)
Line 10: Line 10:
 
* ...predict a distribution rather than point prediction with labeled data, then try the [[Fast Forest Quantile Regression]]  
 
* ...predict a distribution rather than point prediction with labeled data, then try the [[Fast Forest Quantile Regression]]  
 
* ...accuracy matters, fit where small deviations are not penalized, then try [[Support Vector Regression (SVR)]]  
 
* ...accuracy matters, fit where small deviations are not penalized, then try [[Support Vector Regression (SVR)]]  
* ...accuracy matters, I can NOT accept a long training time, and have little memory, then try a [[Decision Forest Regression]]  
+
* ...accuracy matters, I can NOT accept a long training time, and have little [[memory]], then try a [[Decision Forest Regression]]  
* ...accuracy matters, I can NOT accept a long training time, then try a [[Gradient Boosting Machine (GBM)]] with large memory fooprint
+
* ...accuracy matters, I can NOT accept a long training time, then try a [[Gradient Boosting Machine (GBM)]] with large [[memory]] fooprint
 
* ...accuracy matters, I can accept a long training time, then try a [[General Regression Neural Network (GRNN)]]
 
* ...accuracy matters, I can accept a long training time, then try a [[General Regression Neural Network (GRNN)]]
 
* ...accuracy matters, I can allow long training times, then try the [[Neural Network#Deep Neural Network (DNN)|Deep Neural Network (DNN)]]
 
* ...accuracy matters, I can allow long training times, then try the [[Neural Network#Deep Neural Network (DNN)|Deep Neural Network (DNN)]]
Line 23: Line 23:
 
** [https://bookdown.org/max/FES/engineering-numeric-predictors.html Feature Engineering and Selection: A Practical Approach for Predictive Models - 6 Engineering Numeric Predictors | Max Kuhn and Kjell Johnson]
 
** [https://bookdown.org/max/FES/engineering-numeric-predictors.html Feature Engineering and Selection: A Practical Approach for Predictive Models - 6 Engineering Numeric Predictors | Max Kuhn and Kjell Johnson]
 
** [https://docs.aws.amazon.com/machine-learning/latest/dg/regression-model-insights.html Regression Model Insights |] [[Amazon | Amazon Web Services]]
 
** [https://docs.aws.amazon.com/machine-learning/latest/dg/regression-model-insights.html Regression Model Insights |] [[Amazon | Amazon Web Services]]
* [[Excel]] ... [[LangChain#Documents|Documents]] ... [[Database]] ... [[Graph]] ... [[LlamaIndex]]
+
* [[Excel]] ... [[LangChain#Documents|Documents]] ... [[Database|Database; Vector & Relational]] ... [[Graph]] ... [[LlamaIndex]]
  
 
When a value is being predicted, as with stock prices, supervised learning is called regression. Prediction problems (e.g. What will the opening price be for shares tomorrow?) are a subset of regression problems for time series data. [https://www.infoworld.com/article/3394399/machine-learning-algorithms-explained.html Machine learning algorithms explained | Martin Heller - InfoWorld]
 
When a value is being predicted, as with stock prices, supervised learning is called regression. Prediction problems (e.g. What will the opening price be for shares tomorrow?) are a subset of regression problems for time series data. [https://www.infoworld.com/article/3394399/machine-learning-algorithms-explained.html Machine learning algorithms explained | Martin Heller - InfoWorld]

Latest revision as of 22:52, 1 March 2024

AI Solver

I want to...

___________________________________


When a value is being predicted, as with stock prices, supervised learning is called regression. Prediction problems (e.g. What will the opening price be for shares tomorrow?) are a subset of regression problems for time series data. Machine learning algorithms explained | Martin Heller - InfoWorld