Certified Pega Data Scientist 25 온라인 연습
최종 업데이트 시간: 2025년12월09일
당신은 온라인 연습 문제를 통해 Pegasystems PEGACPDS25V1 시험지식에 대해 자신이 어떻게 알고 있는지 파악한 후 시험 참가 신청 여부를 결정할 수 있다.
시험을 100% 합격하고 시험 준비 시간을 35% 절약하기를 바라며 PEGACPDS25V1 덤프 (최신 실제 시험 문제)를 사용 선택하여 현재 최신 285개의 시험 문제와 답을 포함하십시오.
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The Prediction component is added to decision strategies to invoke predictions. It connects the strategy to Prediction Studio models and applies the prediction results in real time.
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Binary classifiers scale well with complex, large datasets. They offer better performance and flexibility compared to static scorecards, which are rule-heavy and less adaptive.
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Prediction models generate outputs such as propensity scores (probabilities) and classified outcomes (e.g., churn/retain). These outputs guide strategy decisions.
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Feature engineering and removing noisy predictors can significantly enhance model accuracy. These steps improve signal clarity and reduce confusion in the learning process.
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Lift measures how much better the model performs compared to random selection. A higher lift indicates a stronger ability to identify positive outcomes.
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The confusion matrix summarizes model predictions and outcomes. It helps analyze the balance between true/false positives and negatives, aiding in tuning and threshold setting.
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Poor performance can stem from overfitting (model learns noise) or class imbalance (skewed outcome distribution), leading to inaccurate or biased predictions.
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AUC (Area Under the Curve) measures how well the model separates positive and negative outcomes. A value closer to 1 indicates high predictive power.
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To deploy a prediction, it must be mapped into a decision strategy and linked to an outcome path. This allows the model to influence real-time action decisions.
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The F1-score is the harmonic mean of precision and recall. It provides a balanced measure of model accuracy when false positives and false negatives are both costly.
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Training data consists of historical cases with known outcomes. This data is used by the model to learn patterns and make accurate future predictions.
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Outcome mapping requires identifying which values from the input data represent positive and negative responses. This allows the model to learn the success/failure patterns.
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ROC (Receiver Operating Characteristic) and AUC (Area Under Curve) scores are used to evaluate model quality. They indicate how well the model discriminates between classes.
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Predictors are variables that correlate with outcomes. Attributes like age or purchase amount are common predictors that help inform the model’s decision-making.
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Scorecards use rule-based scoring logic, making them interpretable and easier to validate. They're useful for regulated environments needing transparent decision logic.