OpenTechBook
  • Home
  • Open Books
    • All Open Books

    • Free eBooks
    • Free Magazines
    • Free Journals

    • Submit an Open Book
  • Quizzes
Home » Quiz » Data Analyst Quiz

Which technique in data mining is used for identifying unusual patterns or anomalies in data?

Difficulty level
  • Anomaly detection
  • Classification
  • Clustering
  • Regression analysis
Anomaly detection is the technique in data mining used for identifying unusual patterns or anomalies in data. It focuses on finding instances that deviate significantly from the norm within a dataset.
Add your answer
Loading...
Facebook Twitter Linkedin Reddit Pinterest
Data Analyst Quiz
Quiz
To analyze and summarize data sets, Excel offers a feature called _______ tables.
What is the significance of 'stakeholder analysis' in the context of data project management?

Related Quiz

  • The _______ clause in SQL is used to specify the condition for the rows to be deleted or updated.
  • For a healthcare provider looking to improve patient care, which data-driven approach would be most beneficial?
  • For a healthcare provider looking to consolidate patient records from various sources, what data warehousing approach would be most effective?
  • In time series analysis, _______ is a common method used to smooth out short-term fluctuations and highlight longer-term trends or cycles.
  • How would you approach a time series analysis for predicting energy consumption patterns in a city with rapidly changing weather conditions?

Leave a commentCancel

Your email address will not be published. Required fields are marked *

Hot Quiz

PHP QuizPython QuizServlet QuizExploratory Data Analysis QuizAppium QuizData Analyst QuizSpring Boot QuizAPI Testing QuizNode.js QuizDatabase Testing QuizAWS Lambda QuizAutomation Testing QuizData Science Statistics QuizADO.NET QuizWeb Services QuizSoftware Testing QuizC Language QuizBootstrap QuizR Programming QuizASP.NET Core Quiz
Copyright © 2024 Open Tech Book
  • About
  • Contact
  • FAQ
  • DMCA
  • Disclaimer
  • Privacy Policy