Questions

What is the difference between knowledge discovery and Data Mining?

What is the difference between knowledge discovery and Data Mining?

Knowledge Discovery in Databases (KDD) is the non-trivial extraction of implicit, previously unknown and potentially useful knowledge from data. Data mining is the exploration and analysis of large quantities of data in order to discover valid, novel, potentially useful, and ultimately understandable patterns in data.

What is knowledge discovery from data in Data Mining?

Data Mining also known as Knowledge Discovery in Databases, refers to the nontrivial extraction of implicit, previously unknown and potentially useful information from data stored in databases.

Is KDD process and Data Mining are same?

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KDD refers to the overall process of discovering useful knowledge from data, and data mining refers to a particular step in this process. Data mining is the application of specific algorithms for extracting patterns from data.”

What are the 3 types of Data Mining?

Data mining has several types, including pictorial data mining, text mining, social media mining, web mining, and audio and video mining amongst others.

Why knowledge discovery from data KDD is different to data mining?

The terms knowledge discovery and data mining are distinct. KDD refers to the overall process of discovering useful knowledge from data. Data mining refers to the application of algorithms for extracting patterns from data without the additional steps of the KDD process.

Why is it called data mining rather knowledge mining?

Why is it called data mining rather than knowledge mining? Data mining means extracting facts from the available data. While Knowledge means a deep study of those facts. We do not collect knowledge but facts.

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What are the five types of knowledge produced from Data Mining?

Kind of knowledge to be mined

  • Characterization.
  • Discrimination.
  • Association and Correlation Analysis.
  • Classification.
  • Prediction.
  • Clustering.
  • Outlier Analysis.
  • Evolution Analysis.

What are the different phases of the knowledge discovery from databases?

Phases of Knowledge Discovery in DataBases (KDD)

  • Data Cleaning− In this step, the noise and inconsistent data is removed.
  • Data Integration− In this step, multiple data sources are combined.
  • Data Selection− In this step, data relevant to the analysis task are retrieved from the database.

Why do we need knowledge discovery process?

The main objective of the KDD process is to extract information from data in the context of large databases. It does this by using Data Mining algorithms to identify what is deemed knowledge. The Knowledge Discovery in Databases is considered as a programmed, exploratory analysis and modeling of vast data repositories.

Why is it called Data Mining rather knowledge mining?