SlideShare a Scribd company logo
Data Processing
What is the need for Data Processing? To get the required information from huge, incomplete, noisy and inconsistent set of data it is necessary to use data processing.
Steps in Data Processing Data Cleaning Data Integration Data Transformation Data reduction Data Summarization
What is Data Cleaning? Data cleaning is a procedure to “clean” the data by filling in missing values, smoothing noisy data, identifying or removing outliers, and resolving inconsistencies
What is Data Integration? Integrating multiple databases, data cubes, or files, this is called data integration.
What is Data Transformation? Data transformation operations, such as normalization and aggregation, are additional data preprocessing procedures that would contribute toward the success of the mining process.
What is Data Reduction? Data reduction obtains a reduced representation of the data set that is much smaller in volume, yet produces the same (or almost the same) analytical results.
What is Data Summarization? It is the processes of representing the collected data in an accurate and compact way without losing any information, it also involves getting a information from collected data. Ex: Display the data as a graph and get the mean, median, mode etc.
How to Clean Data? Handling Missing values Ignore the tuple Fill in the missing value manually Use a global constant to fill in the missing value Use the attribute mean to fill in the missing value Use the attribute mean for all samples belonging to the same class as the given tuple Use the most probable value to fill in the missing value
How to Clean Data? Handle Noisy Data Binning: Binning methods smooth a sorted data value by consulting its “neighborhood”. Regression: Data can be smoothed by fitting the data to a function, such as with regression.  Clustering: Outliers may be detected by clustering, where similar values are organized into groups, or “clusters.”
Data Integration Data Integration combines data from multiple sources into a coherent data store, as in data warehousing. These sources may include multiple databases, data cubes, or flat files. Issues that arises during data integration like Schema integration and object matching Redundancy is another important issue.
Data Transformation Data transformation can be achieved in following ways Smoothing: which works to remove noise from the data Aggregation: where summary or aggregation operations are applied to the data. For example, the daily sales data may be aggregated so as to compute weekly and annuual total scores. Generalization of the data: where low-level or “primitive” (raw) data are replaced by higher-level concepts through the use of concept hierarchies. For example, categorical attributes, like street, can be generalized to higher-level concepts, like city or country. Normalization: where the attribute data are scaled so as to fall within a small specified range, such as −1.0 to 1.0, or 0.0 to 1.0. Attribute construction : this is where new attributes are constructed and added from the given set of attributes to help the mining process.
Data Reduction techniques These are the techniques that can be applied to obtain a reduced representation of the data set that is much smaller in volume, yet closely maintains the integrity of the original data. Data cube aggregation Attribute subset selection Dimensionality reduction Numerosity reduction Discretization and concept hierarchy generation
Visit more self help tutorials Pick a tutorial of your choice and browse through it at your own pace. The tutorials section is free, self-guiding and will not involve any additional support. Visit us at www.dataminingtools.net

More Related Content

What's hot

Introduction To Data Mining
Introduction To Data Mining   Introduction To Data Mining
Introduction To Data Mining
Phi Jack
 
Data preprocessing
Data preprocessingData preprocessing
Data preprocessing
ksamyMCA
 

What's hot (20)

DATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALA
DATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALADATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALA
DATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALA
 
Data mining primitives
Data mining primitivesData mining primitives
Data mining primitives
 
Data warehouse architecture
Data warehouse architecture Data warehouse architecture
Data warehouse architecture
 
Data preprocessing
Data preprocessingData preprocessing
Data preprocessing
 
Data warehousing
Data warehousingData warehousing
Data warehousing
 
Data Preprocessing
Data PreprocessingData Preprocessing
Data Preprocessing
 
Metadata ppt
Metadata pptMetadata ppt
Metadata ppt
 
Data Mining & Data Warehousing Lecture Notes
Data Mining & Data Warehousing Lecture NotesData Mining & Data Warehousing Lecture Notes
Data Mining & Data Warehousing Lecture Notes
 
Data mining techniques unit 1
Data mining techniques  unit 1Data mining techniques  unit 1
Data mining techniques unit 1
 
Knowledge Discovery and Data Mining
Knowledge Discovery and Data MiningKnowledge Discovery and Data Mining
Knowledge Discovery and Data Mining
 
Introduction To Data Mining
Introduction To Data Mining   Introduction To Data Mining
Introduction To Data Mining
 
Introduction to Data Warehouse
Introduction to Data WarehouseIntroduction to Data Warehouse
Introduction to Data Warehouse
 
Data preprocessing in Data Mining
Data preprocessing in Data MiningData preprocessing in Data Mining
Data preprocessing in Data Mining
 
OLAP & DATA WAREHOUSE
OLAP & DATA WAREHOUSEOLAP & DATA WAREHOUSE
OLAP & DATA WAREHOUSE
 
Data preprocessing
Data preprocessingData preprocessing
Data preprocessing
 
Data preprocessing using Machine Learning
Data  preprocessing using Machine Learning Data  preprocessing using Machine Learning
Data preprocessing using Machine Learning
 
Exploratory data analysis with Python
Exploratory data analysis with PythonExploratory data analysis with Python
Exploratory data analysis with Python
 
Data mining
Data miningData mining
Data mining
 
Map reduce in BIG DATA
Map reduce in BIG DATAMap reduce in BIG DATA
Map reduce in BIG DATA
 
Data reduction
Data reductionData reduction
Data reduction
 

Similar to Data Mining: Data processing

Similar to Data Mining: Data processing (20)

Data preprocessing ng
Data preprocessing   ngData preprocessing   ng
Data preprocessing ng
 
Data preprocessing ng
Data preprocessing   ngData preprocessing   ng
Data preprocessing ng
 
Data preprocessing
Data preprocessingData preprocessing
Data preprocessing
 
Data preprocessing
Data preprocessingData preprocessing
Data preprocessing
 
Data preprocessing
Data preprocessingData preprocessing
Data preprocessing
 
Data preprocessing
Data preprocessingData preprocessing
Data preprocessing
 
1234
12341234
1234
 
Preprocessing.ppt
Preprocessing.pptPreprocessing.ppt
Preprocessing.ppt
 
Data preprocessing
Data preprocessingData preprocessing
Data preprocessing
 
Data preprocessing
Data preprocessingData preprocessing
Data preprocessing
 
Data preprocessing
Data preprocessingData preprocessing
Data preprocessing
 
Data preprocessing
Data preprocessingData preprocessing
Data preprocessing
 
Data preprocessing
Data preprocessingData preprocessing
Data preprocessing
 
Data preprocessing
Data preprocessingData preprocessing
Data preprocessing
 
Data preprocessing
Data preprocessingData preprocessing
Data preprocessing
 
Data1
Data1Data1
Data1
 
Data1
Data1Data1
Data1
 
Preprocess
PreprocessPreprocess
Preprocess
 
Intro to Data warehousing lecture 17
Intro to Data warehousing   lecture 17Intro to Data warehousing   lecture 17
Intro to Data warehousing lecture 17
 
Datapreprocessingppt
DatapreprocessingpptDatapreprocessingppt
Datapreprocessingppt
 

More from DataminingTools Inc

More from DataminingTools Inc (20)

Terminology Machine Learning
Terminology Machine LearningTerminology Machine Learning
Terminology Machine Learning
 
Techniques Machine Learning
Techniques Machine LearningTechniques Machine Learning
Techniques Machine Learning
 
Machine learning Introduction
Machine learning IntroductionMachine learning Introduction
Machine learning Introduction
 
Areas of machine leanring
Areas of machine leanringAreas of machine leanring
Areas of machine leanring
 
AI: Planning and AI
AI: Planning and AIAI: Planning and AI
AI: Planning and AI
 
AI: Logic in AI 2
AI: Logic in AI 2AI: Logic in AI 2
AI: Logic in AI 2
 
AI: Logic in AI
AI: Logic in AIAI: Logic in AI
AI: Logic in AI
 
AI: Learning in AI 2
AI: Learning in AI 2AI: Learning in AI 2
AI: Learning in AI 2
 
AI: Learning in AI
AI: Learning in AI AI: Learning in AI
AI: Learning in AI
 
AI: Introduction to artificial intelligence
AI: Introduction to artificial intelligenceAI: Introduction to artificial intelligence
AI: Introduction to artificial intelligence
 
AI: Belief Networks
AI: Belief NetworksAI: Belief Networks
AI: Belief Networks
 
AI: AI & Searching
AI: AI & SearchingAI: AI & Searching
AI: AI & Searching
 
AI: AI & Problem Solving
AI: AI & Problem SolvingAI: AI & Problem Solving
AI: AI & Problem Solving
 
Data Mining: Text and web mining
Data Mining: Text and web miningData Mining: Text and web mining
Data Mining: Text and web mining
 
Data Mining: Outlier analysis
Data Mining: Outlier analysisData Mining: Outlier analysis
Data Mining: Outlier analysis
 
Data Mining: Mining stream time series and sequence data
Data Mining: Mining stream time series and sequence dataData Mining: Mining stream time series and sequence data
Data Mining: Mining stream time series and sequence data
 
Data Mining: Mining ,associations, and correlations
Data Mining: Mining ,associations, and correlationsData Mining: Mining ,associations, and correlations
Data Mining: Mining ,associations, and correlations
 
Data Mining: Graph mining and social network analysis
Data Mining: Graph mining and social network analysisData Mining: Graph mining and social network analysis
Data Mining: Graph mining and social network analysis
 
Data warehouse and olap technology
Data warehouse and olap technologyData warehouse and olap technology
Data warehouse and olap technology
 
Data Mining: clustering and analysis
Data Mining: clustering and analysisData Mining: clustering and analysis
Data Mining: clustering and analysis
 

Recently uploaded

Recently uploaded (20)

Buy Epson EcoTank L3210 Colour Printer Online.pptx
Buy Epson EcoTank L3210 Colour Printer Online.pptxBuy Epson EcoTank L3210 Colour Printer Online.pptx
Buy Epson EcoTank L3210 Colour Printer Online.pptx
 
Integrating Telephony Systems with Salesforce: Insights and Considerations, B...
Integrating Telephony Systems with Salesforce: Insights and Considerations, B...Integrating Telephony Systems with Salesforce: Insights and Considerations, B...
Integrating Telephony Systems with Salesforce: Insights and Considerations, B...
 
Introduction to Open Source RAG and RAG Evaluation
Introduction to Open Source RAG and RAG EvaluationIntroduction to Open Source RAG and RAG Evaluation
Introduction to Open Source RAG and RAG Evaluation
 
AI revolution and Salesforce, Jiří Karpíšek
AI revolution and Salesforce, Jiří KarpíšekAI revolution and Salesforce, Jiří Karpíšek
AI revolution and Salesforce, Jiří Karpíšek
 
Linux Foundation Edge _ Overview of FDO Software Components _ Randy at Intel.pdf
Linux Foundation Edge _ Overview of FDO Software Components _ Randy at Intel.pdfLinux Foundation Edge _ Overview of FDO Software Components _ Randy at Intel.pdf
Linux Foundation Edge _ Overview of FDO Software Components _ Randy at Intel.pdf
 
Intro in Product Management - Коротко про професію продакт менеджера
Intro in Product Management - Коротко про професію продакт менеджераIntro in Product Management - Коротко про професію продакт менеджера
Intro in Product Management - Коротко про професію продакт менеджера
 
Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...
Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...
Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...
 
Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
 
Agentic RAG What it is its types applications and implementation.pdf
Agentic RAG What it is its types applications and implementation.pdfAgentic RAG What it is its types applications and implementation.pdf
Agentic RAG What it is its types applications and implementation.pdf
 
ASRock Industrial FDO Solutions in Action for Industrial Edge AI _ Kenny at A...
ASRock Industrial FDO Solutions in Action for Industrial Edge AI _ Kenny at A...ASRock Industrial FDO Solutions in Action for Industrial Edge AI _ Kenny at A...
ASRock Industrial FDO Solutions in Action for Industrial Edge AI _ Kenny at A...
 
FDO for Camera, Sensor and Networking Device – Commercial Solutions from VinC...
FDO for Camera, Sensor and Networking Device – Commercial Solutions from VinC...FDO for Camera, Sensor and Networking Device – Commercial Solutions from VinC...
FDO for Camera, Sensor and Networking Device – Commercial Solutions from VinC...
 
The Metaverse: Are We There Yet?
The  Metaverse:    Are   We  There  Yet?The  Metaverse:    Are   We  There  Yet?
The Metaverse: Are We There Yet?
 
Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...
Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...
Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...
 
Strategic AI Integration in Engineering Teams
Strategic AI Integration in Engineering TeamsStrategic AI Integration in Engineering Teams
Strategic AI Integration in Engineering Teams
 
Syngulon - Selection technology May 2024.pdf
Syngulon - Selection technology May 2024.pdfSyngulon - Selection technology May 2024.pdf
Syngulon - Selection technology May 2024.pdf
 
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdfThe Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
 
SOQL 201 for Admins & Developers: Slice & Dice Your Org’s Data With Aggregate...
SOQL 201 for Admins & Developers: Slice & Dice Your Org’s Data With Aggregate...SOQL 201 for Admins & Developers: Slice & Dice Your Org’s Data With Aggregate...
SOQL 201 for Admins & Developers: Slice & Dice Your Org’s Data With Aggregate...
 
What's New in Teams Calling, Meetings and Devices April 2024
What's New in Teams Calling, Meetings and Devices April 2024What's New in Teams Calling, Meetings and Devices April 2024
What's New in Teams Calling, Meetings and Devices April 2024
 
Powerful Start- the Key to Project Success, Barbara Laskowska
Powerful Start- the Key to Project Success, Barbara LaskowskaPowerful Start- the Key to Project Success, Barbara Laskowska
Powerful Start- the Key to Project Success, Barbara Laskowska
 
Top 10 Symfony Development Companies 2024
Top 10 Symfony Development Companies 2024Top 10 Symfony Development Companies 2024
Top 10 Symfony Development Companies 2024
 

Data Mining: Data processing

  • 2. What is the need for Data Processing? To get the required information from huge, incomplete, noisy and inconsistent set of data it is necessary to use data processing.
  • 3. Steps in Data Processing Data Cleaning Data Integration Data Transformation Data reduction Data Summarization
  • 4. What is Data Cleaning? Data cleaning is a procedure to “clean” the data by filling in missing values, smoothing noisy data, identifying or removing outliers, and resolving inconsistencies
  • 5. What is Data Integration? Integrating multiple databases, data cubes, or files, this is called data integration.
  • 6. What is Data Transformation? Data transformation operations, such as normalization and aggregation, are additional data preprocessing procedures that would contribute toward the success of the mining process.
  • 7. What is Data Reduction? Data reduction obtains a reduced representation of the data set that is much smaller in volume, yet produces the same (or almost the same) analytical results.
  • 8. What is Data Summarization? It is the processes of representing the collected data in an accurate and compact way without losing any information, it also involves getting a information from collected data. Ex: Display the data as a graph and get the mean, median, mode etc.
  • 9. How to Clean Data? Handling Missing values Ignore the tuple Fill in the missing value manually Use a global constant to fill in the missing value Use the attribute mean to fill in the missing value Use the attribute mean for all samples belonging to the same class as the given tuple Use the most probable value to fill in the missing value
  • 10. How to Clean Data? Handle Noisy Data Binning: Binning methods smooth a sorted data value by consulting its “neighborhood”. Regression: Data can be smoothed by fitting the data to a function, such as with regression.  Clustering: Outliers may be detected by clustering, where similar values are organized into groups, or “clusters.”
  • 11. Data Integration Data Integration combines data from multiple sources into a coherent data store, as in data warehousing. These sources may include multiple databases, data cubes, or flat files. Issues that arises during data integration like Schema integration and object matching Redundancy is another important issue.
  • 12. Data Transformation Data transformation can be achieved in following ways Smoothing: which works to remove noise from the data Aggregation: where summary or aggregation operations are applied to the data. For example, the daily sales data may be aggregated so as to compute weekly and annuual total scores. Generalization of the data: where low-level or “primitive” (raw) data are replaced by higher-level concepts through the use of concept hierarchies. For example, categorical attributes, like street, can be generalized to higher-level concepts, like city or country. Normalization: where the attribute data are scaled so as to fall within a small specified range, such as −1.0 to 1.0, or 0.0 to 1.0. Attribute construction : this is where new attributes are constructed and added from the given set of attributes to help the mining process.
  • 13. Data Reduction techniques These are the techniques that can be applied to obtain a reduced representation of the data set that is much smaller in volume, yet closely maintains the integrity of the original data. Data cube aggregation Attribute subset selection Dimensionality reduction Numerosity reduction Discretization and concept hierarchy generation
  • 14. Visit more self help tutorials Pick a tutorial of your choice and browse through it at your own pace. The tutorials section is free, self-guiding and will not involve any additional support. Visit us at www.dataminingtools.net