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Transcript
A brief history of data mining
The term "Data mining" was introduced in the 1990s, but data mining is the evolution of a field
with a long history.
Data mining roots are traced back along three family lines: classical statistics, artificial
intelligence, and machine learning.
Statistics are the foundation of most technologies on which data mining is built, e.g. regression
analysis, standard distribution, standard deviation, standard variance, discriminate analysis,
cluster analysis, and confidence intervals. All of these are used to study data and data
relationships.
Artificial intelligence, or AI, which is built upon heuristics as opposed to statistics, attempts to
apply human-thought-like processing to statistical problems. Certain AI concepts which were
adopted by some high-end commercial products, such as query optimization modules for
Relational Database Management Systems (RDBMS).
Machine learning is the union of statistics and AI. It could be considered an evolution of AI,
because it blends AI heuristics with advanced statistical analysis. Machine learning attempts to
let computer programs learn about the data they study, such that programs make different
decisions based on the qualities of the studied data, using statistics for fundamental concepts, and
adding more advanced AI heuristics and algorithms to achieve its goals.
Data mining, in many ways, is fundamentally the adaptation of machine learning techniques to
business applications. Data mining is best described as the union of historical and recent
developments in statistics, AI, and machine learning. These techniques are then used together to
study data and find previously-hidden trends or patterns within.
Directions: Open up Word and answer the following questions in your own words based on the
following article you have just read.
Save as: History of Data Mining
Type the question and the answer. The font will be Times New Roman size 12.
At the top of the page make sure that you type YOUR NAME C#P_
The # is for the Computer you sit at, The _is for the period you are in
When you finish upload the word document to Mr. Stives
Questions
1. When was Data Mining Introduced?
2. What are the Data Mining roots traced back to?
3. What is Artificial intelligence?
4. What does machine learning consists of?
5. What does machine learning attempt to do?
6. What is Data mining best described as?
Save as: History of Data Mining
Don’t Forget to Upload to Mr. Stives
Next Assignment is: Implication for database administrators,
developers, and general public