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NEW QUESTION 28
You are building a linear model with over 100 input features, all with values between -1 and 1. You suspect that many features are non-informative. You want to remove the non-informative features from your model while keeping the informative ones in their original form. Which technique should you use?
- A. Use L1 regularization to reduce the coefficients of uninformative features to 0.
- B. After building your model, use Shapley values to determine which features are the most informative.
- C. Use Principal Component Analysis to eliminate the least informative features.
- D. Use an iterative dropout technique to identify which features do not degrade the model when removed.
Answer: A
Explanation:
https://cloud.google.com/ai-platform/prediction/docs/ai-explanations/overview#sampled-shapley
NEW QUESTION 29
You work on an operations team at an international company that manages a large fleet of on-premises servers located in few data centers around the world. Your team collects monitoring data from the servers, including CPU/memory consumption. When an incident occurs on a server, your team is responsible for fixing it. Incident data has not been properly labeled yet. Your management team wants you to build a predictive maintenance solution that uses monitoring data from the VMs to detect potential failures and then alerts the service desk team. What should you do first?
- A. Implement a simple heuristic (e.g., based on z-score) to label the machines' historical performance data. Train a model to predict anomalies based on this labeled dataset.
- B. Develop a simple heuristic (e.g., based on z-score) to label the machines' historical performance data. Test this heuristic in a production environment.
- C. Train a time-series model to predict the machines' performance values. Configure an alert if a machine's actual performance values significantly differ from the predicted performance values.
- D. Hire a team of qualified analysts to review and label the machines' historical performance data. Train a model based on this manually labeled dataset.
Answer: D
NEW QUESTION 30
A Data Scientist is developing a machine learning model to classify whether a financial transaction is fraudulent. The labeled data available for training consists of 100,000 non-fraudulent observations and 1,000 fraudulent observations.
The Data Scientist applies the XGBoost algorithm to the data, resulting in the following confusion matrix when the trained model is applied to a previously unseen validation dataset. The accuracy of the model is 99.1%, but the Data Scientist has been asked to reduce the number of false negatives.
Which combination of steps should the Data Scientist take to reduce the number of false positive predictions by the model? (Choose two.)
- A. Change the XGBoost eval_metric parameter to optimize based on rmse instead of error.
- B. Increase the XGBoost scale_pos_weight parameter to adjust the balance of positive and negative weights.
- C. Change the XGBoost eval_metric parameter to optimize based on AUC instead of error.
- D. Decrease the XGBoost max_depth parameter because the model is currently overfitting the data.
- E. Increase the XGBoost max_depth parameter because the model is currently underfitting the data.
Answer: C,D
NEW QUESTION 31
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