Knowee
Questions
Features
Study Tools

True or False: Data Mining can be said to be a process designed to detect patterns in data sets.Question 3Select one:TrueFalse

Question

True or False:

Data Mining can be said to be a process designed to detect patterns in data sets.

Question 3
Select one:

  • True
  • False
🧐 Not the exact question you are looking for?Go ask a question

Solution

Answer:

True.

Explanation:

Data mining is indeed a process aimed at discovering patterns and extracting valuable information from large sets of data. It involves utilizing various techniques from statistics, machine learning, and database systems to analyze data for trends and relationships that may not be immediately obvious. By applying algorithms to the data, one can uncover hidden patterns, correlations, and insights that assist in making informed decisions.

In essence, data mining transforms raw data into useful information, allowing organizations to identify trends, forecast outcomes, and enhance their strategic decision-making. This capability is increasingly important in a data-driven world where vast amounts of information are generated daily. Hence, stating that data mining is a process designed to detect patterns in data sets is accurate.

This problem has been solved

Similar Questions

True or False: Information Retrieval or text analytics is NOT a form of data mining.Question 2Select one:TrueFalse

What is the process of discovering patterns in large data sets called?Select one:a.Data analysisb.Data visualizationc.Data miningd.Data collection

Which of the following is NOT a step in the data mining process?Data EncodingData ExplorationData CleaningData Modeling

Naive Bayes classifier is a type of supervised learning - True or False?Answer choicesSelect an optionTRUEFALSEUnsupervised learningNone of the options

An algorithm is a general process for solving a category of problems.Question 10Select one:TrueFalse

1/3

Upgrade your grade with Knowee

Get personalized homework help. Review tough concepts in more detail, or go deeper into your topic by exploring other relevant questions.