SlideShare a Scribd company logo
1 of 11
Download to read offline
‐Penalized Logistic Regression

               Setia Pramana
Medical Epidemiology and Biostatistics Department, 
          Karolinska Institute, Stockholm




                                                      1
Introduction
• Logistic regression is a supervised method for binary 
  or multi‐class classification.
• Logistic regression models the probability of 
  membership of a class with transforms of linear 
  combinations of explanatory variables.




                                                       2
Introduction
• In high‐dimensional data (e.g., microarray):  More 
  variables than the observations  Classical logistic 
  regression does not work.
• Other problems: Variables are correlated 
  (multicolinierity) and overfitting.
• Solution: Introduce a penalty for complexity in the 
  model.




                                                          3
Logistic Regression
• Let is an array of binary (e.g., malaria types) and 
  is expression level of the j‐th protein. We can fit the 
  following logistic model:



•       probability that an array with measured 
  expression  represents a class of type      .
• Maximize the log‐likelihood:


                                                             4
Penalized Logistic Regression
• Penalized log‐likelihood:

•   : Tuning parameter
•       : a penalty function
•     ‐penalization (Lasso):




                                     5
‐Penalized Logistic Regression
• Shrinks all regression coefficients () toward zero and 
  set some of them to zero. 
• Performs parameter estimation and variable 
  selection at the same time.
• L1‐penalized log‐likelihood  is maximized using full 
  gradient algorithm (Goeman, 2010).
• The choice of λ is crucial and chosen via cross‐
  validation procedure.
• The procedure is implemented in an R package called 
  penalized.

                                                         6
K‐fold Cross Validation
                     test           train
                   Test     Train on (k   - 1) splits




         k-fold




• Randomly divide your data into K pieces/folds
• Treat 1st fold as the test dataset. Fit the model to the 
  other folds (training data). 
• Apply the model to the test data and repeat k times.
• Calculate statistics of model accuracy and fit from the 
  test data only.
                                                         7
Obtaining The Optimal 
• Plot of cross‐validated likelihood against :




• In this example, the optimal = 4.11 gives the 
  maximum log‐likelihood.                           8
Obtaining The Optimal 
• Note that in k‐fold CV method, allocation of the 
  sample into k folds are perform randomly.
• Different randomization may lead to slightly different 
  results ().
• To obtain more robust λ value, a hundred different 
  cross validations were performed.
• Take the average of         ,…,     ( ). 
• Use  for fitting the final L1‐penalized logistic model.


                                                        9
Validation?
• Use another experiment for validation




                                          10
Thank you for your attention !




                                 11

More Related Content

What's hot

A case study on churn analysis1
A case study on churn analysis1A case study on churn analysis1
A case study on churn analysis1Amit Kumar
 
Soal Jawab Kalkulus Model Pertumbuhan Gompertz
Soal Jawab Kalkulus Model Pertumbuhan GompertzSoal Jawab Kalkulus Model Pertumbuhan Gompertz
Soal Jawab Kalkulus Model Pertumbuhan GompertzDadang Hamzah
 
3 R Tutorial Data Structure
3 R Tutorial Data Structure3 R Tutorial Data Structure
3 R Tutorial Data StructureSakthi Dasans
 
Chp9 - Research Methods for Business By Authors Uma Sekaran and Roger Bougie
Chp9  - Research Methods for Business By Authors Uma Sekaran and Roger BougieChp9  - Research Methods for Business By Authors Uma Sekaran and Roger Bougie
Chp9 - Research Methods for Business By Authors Uma Sekaran and Roger BougieHassan Usman
 
support vector regression
support vector regressionsupport vector regression
support vector regressionAkhilesh Joshi
 
Introduction to business statistics
Introduction to business statisticsIntroduction to business statistics
Introduction to business statisticsAakash Kulkarni
 
Recurrent Neural Networks for Recommendations and Personalization with Nick P...
Recurrent Neural Networks for Recommendations and Personalization with Nick P...Recurrent Neural Networks for Recommendations and Personalization with Nick P...
Recurrent Neural Networks for Recommendations and Personalization with Nick P...Databricks
 
Customer Churn Prevention Powerpoint Presentation Slides
Customer Churn Prevention Powerpoint Presentation SlidesCustomer Churn Prevention Powerpoint Presentation Slides
Customer Churn Prevention Powerpoint Presentation SlidesSlideTeam
 
An Introduction to RFM in Analytics
An Introduction to RFM in AnalyticsAn Introduction to RFM in Analytics
An Introduction to RFM in AnalyticsSAS Canada
 
Rancangan faktorial
Rancangan faktorialRancangan faktorial
Rancangan faktorialAndi Rahim
 
BUSINESS RESEARCH METHODS
BUSINESS RESEARCH METHODSBUSINESS RESEARCH METHODS
BUSINESS RESEARCH METHODSVisualBee.com
 
Time Series Forecasting and Index Numbers
Time Series Forecasting and Index NumbersTime Series Forecasting and Index Numbers
Time Series Forecasting and Index NumbersYesica Adicondro
 

What's hot (20)

Analisis Time Series
Analisis Time SeriesAnalisis Time Series
Analisis Time Series
 
A case study on churn analysis1
A case study on churn analysis1A case study on churn analysis1
A case study on churn analysis1
 
Malhotra12
Malhotra12Malhotra12
Malhotra12
 
Soal Jawab Kalkulus Model Pertumbuhan Gompertz
Soal Jawab Kalkulus Model Pertumbuhan GompertzSoal Jawab Kalkulus Model Pertumbuhan Gompertz
Soal Jawab Kalkulus Model Pertumbuhan Gompertz
 
Chapter 12
Chapter 12Chapter 12
Chapter 12
 
3 R Tutorial Data Structure
3 R Tutorial Data Structure3 R Tutorial Data Structure
3 R Tutorial Data Structure
 
Introduzione al datamining
Introduzione al dataminingIntroduzione al datamining
Introduzione al datamining
 
cross tabulation
 cross tabulation cross tabulation
cross tabulation
 
Mentkuan 9 persamaansimultan
Mentkuan 9 persamaansimultanMentkuan 9 persamaansimultan
Mentkuan 9 persamaansimultan
 
Chp9 - Research Methods for Business By Authors Uma Sekaran and Roger Bougie
Chp9  - Research Methods for Business By Authors Uma Sekaran and Roger BougieChp9  - Research Methods for Business By Authors Uma Sekaran and Roger Bougie
Chp9 - Research Methods for Business By Authors Uma Sekaran and Roger Bougie
 
Regression analysis
Regression analysisRegression analysis
Regression analysis
 
support vector regression
support vector regressionsupport vector regression
support vector regression
 
Introduction to business statistics
Introduction to business statisticsIntroduction to business statistics
Introduction to business statistics
 
Recurrent Neural Networks for Recommendations and Personalization with Nick P...
Recurrent Neural Networks for Recommendations and Personalization with Nick P...Recurrent Neural Networks for Recommendations and Personalization with Nick P...
Recurrent Neural Networks for Recommendations and Personalization with Nick P...
 
Customer Churn Prevention Powerpoint Presentation Slides
Customer Churn Prevention Powerpoint Presentation SlidesCustomer Churn Prevention Powerpoint Presentation Slides
Customer Churn Prevention Powerpoint Presentation Slides
 
005 matrik kovarian
005 matrik kovarian005 matrik kovarian
005 matrik kovarian
 
An Introduction to RFM in Analytics
An Introduction to RFM in AnalyticsAn Introduction to RFM in Analytics
An Introduction to RFM in Analytics
 
Rancangan faktorial
Rancangan faktorialRancangan faktorial
Rancangan faktorial
 
BUSINESS RESEARCH METHODS
BUSINESS RESEARCH METHODSBUSINESS RESEARCH METHODS
BUSINESS RESEARCH METHODS
 
Time Series Forecasting and Index Numbers
Time Series Forecasting and Index NumbersTime Series Forecasting and Index Numbers
Time Series Forecasting and Index Numbers
 

Similar to Classification using L1-Penalized Logistic Regression

SMOTE and K-Fold Cross Validation-Presentation.pptx
SMOTE and K-Fold Cross Validation-Presentation.pptxSMOTE and K-Fold Cross Validation-Presentation.pptx
SMOTE and K-Fold Cross Validation-Presentation.pptxHaritikaChhatwal1
 
Selection K in K-means Clustering
Selection K in K-means ClusteringSelection K in K-means Clustering
Selection K in K-means ClusteringJunghoon Kim
 
Two strategies for large-scale multi-label classification on the YouTube-8M d...
Two strategies for large-scale multi-label classification on the YouTube-8M d...Two strategies for large-scale multi-label classification on the YouTube-8M d...
Two strategies for large-scale multi-label classification on the YouTube-8M d...Dalei Li
 
Modeling Chemical Datasets
Modeling Chemical DatasetsModeling Chemical Datasets
Modeling Chemical DatasetsAbhik Seal
 
Week 11 Model Evalaution Model Evaluation
Week 11 Model Evalaution Model EvaluationWeek 11 Model Evalaution Model Evaluation
Week 11 Model Evalaution Model Evaluationkhairulhuda242
 
Incremental collaborative filtering via evolutionary co clustering
Incremental collaborative filtering via evolutionary co clusteringIncremental collaborative filtering via evolutionary co clustering
Incremental collaborative filtering via evolutionary co clusteringAllen Wu
 
7. logistics regression using spss
7. logistics regression using spss7. logistics regression using spss
7. logistics regression using spssDr Nisha Arora
 
Trajectory Transformer.pptx
Trajectory Transformer.pptxTrajectory Transformer.pptx
Trajectory Transformer.pptxSeungeon Baek
 
Generalized Linear Models in Spark MLlib and SparkR by Xiangrui Meng
Generalized Linear Models in Spark MLlib and SparkR by Xiangrui MengGeneralized Linear Models in Spark MLlib and SparkR by Xiangrui Meng
Generalized Linear Models in Spark MLlib and SparkR by Xiangrui MengSpark Summit
 
Generalized Linear Models in Spark MLlib and SparkR
Generalized Linear Models in Spark MLlib and SparkRGeneralized Linear Models in Spark MLlib and SparkR
Generalized Linear Models in Spark MLlib and SparkRDatabricks
 
Lecture 8: Machine Learning in Practice (1)
Lecture 8: Machine Learning in Practice (1) Lecture 8: Machine Learning in Practice (1)
Lecture 8: Machine Learning in Practice (1) Marina Santini
 
L05 language model_part2
L05 language model_part2L05 language model_part2
L05 language model_part2ananth
 
Your Classifier is Secretly an Energy based model and you should treat it lik...
Your Classifier is Secretly an Energy based model and you should treat it lik...Your Classifier is Secretly an Energy based model and you should treat it lik...
Your Classifier is Secretly an Energy based model and you should treat it lik...Seunghyun Hwang
 
MM - KBAC: Using mixed models to adjust for population structure in a rare-va...
MM - KBAC: Using mixed models to adjust for population structure in a rare-va...MM - KBAC: Using mixed models to adjust for population structure in a rare-va...
MM - KBAC: Using mixed models to adjust for population structure in a rare-va...Golden Helix Inc
 
CounterFactual Explanations.pdf
CounterFactual Explanations.pdfCounterFactual Explanations.pdf
CounterFactual Explanations.pdfBong-Ho Lee
 
6 Evaluating Predictive Performance and ensemble.pptx
6 Evaluating Predictive Performance and ensemble.pptx6 Evaluating Predictive Performance and ensemble.pptx
6 Evaluating Predictive Performance and ensemble.pptxmohammedalherwi1
 
MM-KBAC – Using Mixed Models to Adjust for Population Structure in a Rare-var...
MM-KBAC – Using Mixed Models to Adjust for Population Structure in a Rare-var...MM-KBAC – Using Mixed Models to Adjust for Population Structure in a Rare-var...
MM-KBAC – Using Mixed Models to Adjust for Population Structure in a Rare-var...Golden Helix Inc
 

Similar to Classification using L1-Penalized Logistic Regression (20)

SMOTE and K-Fold Cross Validation-Presentation.pptx
SMOTE and K-Fold Cross Validation-Presentation.pptxSMOTE and K-Fold Cross Validation-Presentation.pptx
SMOTE and K-Fold Cross Validation-Presentation.pptx
 
Selection K in K-means Clustering
Selection K in K-means ClusteringSelection K in K-means Clustering
Selection K in K-means Clustering
 
Logistical Regression.pptx
Logistical Regression.pptxLogistical Regression.pptx
Logistical Regression.pptx
 
crossvalidation.pptx
crossvalidation.pptxcrossvalidation.pptx
crossvalidation.pptx
 
Two strategies for large-scale multi-label classification on the YouTube-8M d...
Two strategies for large-scale multi-label classification on the YouTube-8M d...Two strategies for large-scale multi-label classification on the YouTube-8M d...
Two strategies for large-scale multi-label classification on the YouTube-8M d...
 
Modeling Chemical Datasets
Modeling Chemical DatasetsModeling Chemical Datasets
Modeling Chemical Datasets
 
Week 11 Model Evalaution Model Evaluation
Week 11 Model Evalaution Model EvaluationWeek 11 Model Evalaution Model Evaluation
Week 11 Model Evalaution Model Evaluation
 
ML MODULE 5.pdf
ML MODULE 5.pdfML MODULE 5.pdf
ML MODULE 5.pdf
 
Incremental collaborative filtering via evolutionary co clustering
Incremental collaborative filtering via evolutionary co clusteringIncremental collaborative filtering via evolutionary co clustering
Incremental collaborative filtering via evolutionary co clustering
 
7. logistics regression using spss
7. logistics regression using spss7. logistics regression using spss
7. logistics regression using spss
 
Trajectory Transformer.pptx
Trajectory Transformer.pptxTrajectory Transformer.pptx
Trajectory Transformer.pptx
 
Generalized Linear Models in Spark MLlib and SparkR by Xiangrui Meng
Generalized Linear Models in Spark MLlib and SparkR by Xiangrui MengGeneralized Linear Models in Spark MLlib and SparkR by Xiangrui Meng
Generalized Linear Models in Spark MLlib and SparkR by Xiangrui Meng
 
Generalized Linear Models in Spark MLlib and SparkR
Generalized Linear Models in Spark MLlib and SparkRGeneralized Linear Models in Spark MLlib and SparkR
Generalized Linear Models in Spark MLlib and SparkR
 
Lecture 8: Machine Learning in Practice (1)
Lecture 8: Machine Learning in Practice (1) Lecture 8: Machine Learning in Practice (1)
Lecture 8: Machine Learning in Practice (1)
 
L05 language model_part2
L05 language model_part2L05 language model_part2
L05 language model_part2
 
Your Classifier is Secretly an Energy based model and you should treat it lik...
Your Classifier is Secretly an Energy based model and you should treat it lik...Your Classifier is Secretly an Energy based model and you should treat it lik...
Your Classifier is Secretly an Energy based model and you should treat it lik...
 
MM - KBAC: Using mixed models to adjust for population structure in a rare-va...
MM - KBAC: Using mixed models to adjust for population structure in a rare-va...MM - KBAC: Using mixed models to adjust for population structure in a rare-va...
MM - KBAC: Using mixed models to adjust for population structure in a rare-va...
 
CounterFactual Explanations.pdf
CounterFactual Explanations.pdfCounterFactual Explanations.pdf
CounterFactual Explanations.pdf
 
6 Evaluating Predictive Performance and ensemble.pptx
6 Evaluating Predictive Performance and ensemble.pptx6 Evaluating Predictive Performance and ensemble.pptx
6 Evaluating Predictive Performance and ensemble.pptx
 
MM-KBAC – Using Mixed Models to Adjust for Population Structure in a Rare-var...
MM-KBAC – Using Mixed Models to Adjust for Population Structure in a Rare-var...MM-KBAC – Using Mixed Models to Adjust for Population Structure in a Rare-var...
MM-KBAC – Using Mixed Models to Adjust for Population Structure in a Rare-var...
 

More from Setia Pramana

Big data for official statistics @ Konferensi Big Data Indonesia 2016
Big data for official statistics @ Konferensi Big Data Indonesia 2016 Big data for official statistics @ Konferensi Big Data Indonesia 2016
Big data for official statistics @ Konferensi Big Data Indonesia 2016 Setia Pramana
 
Introduction to Computational Statistics
Introduction to Computational StatisticsIntroduction to Computational Statistics
Introduction to Computational StatisticsSetia Pramana
 
Bioinformatics I-4 lecture
Bioinformatics I-4 lectureBioinformatics I-4 lecture
Bioinformatics I-4 lectureSetia Pramana
 
Correlation and Regression Analysis using SPSS and Microsoft Excel
Correlation and Regression Analysis using SPSS and Microsoft ExcelCorrelation and Regression Analysis using SPSS and Microsoft Excel
Correlation and Regression Analysis using SPSS and Microsoft ExcelSetia Pramana
 
Pengalaman Menjadi Mahasiswa Muslim di Eropa
Pengalaman Menjadi Mahasiswa Muslim di EropaPengalaman Menjadi Mahasiswa Muslim di Eropa
Pengalaman Menjadi Mahasiswa Muslim di EropaSetia Pramana
 
Multivariate data analysis
Multivariate data analysisMultivariate data analysis
Multivariate data analysisSetia Pramana
 
Molecular Subtyping of Breast Cancer and Somatic Mutation Discovery Using DNA...
Molecular Subtyping of Breast Cancer and Somatic Mutation Discovery Using DNA...Molecular Subtyping of Breast Cancer and Somatic Mutation Discovery Using DNA...
Molecular Subtyping of Breast Cancer and Somatic Mutation Discovery Using DNA...Setia Pramana
 
The Role of The Statisticians in Personalized Medicine: An Overview of Stati...
The Role of The Statisticians in Personalized Medicine:  An Overview of Stati...The Role of The Statisticians in Personalized Medicine:  An Overview of Stati...
The Role of The Statisticians in Personalized Medicine: An Overview of Stati...Setia Pramana
 
High throughput Data Analysis
High throughput Data AnalysisHigh throughput Data Analysis
High throughput Data AnalysisSetia Pramana
 
Research Methods for Computational Statistics
Research Methods for Computational StatisticsResearch Methods for Computational Statistics
Research Methods for Computational StatisticsSetia Pramana
 
Survival Data Analysis for Sekolah Tinggi Ilmu Statistik Jakarta
Survival Data Analysis for Sekolah Tinggi Ilmu Statistik JakartaSurvival Data Analysis for Sekolah Tinggi Ilmu Statistik Jakarta
Survival Data Analysis for Sekolah Tinggi Ilmu Statistik JakartaSetia Pramana
 
The Role of Statistician in Personalized Medicine: An Overview of Statistical...
The Role of Statistician in Personalized Medicine: An Overview of Statistical...The Role of Statistician in Personalized Medicine: An Overview of Statistical...
The Role of Statistician in Personalized Medicine: An Overview of Statistical...Setia Pramana
 
“Big Data” and the Challenges for Statisticians
“Big Data” and the  Challenges for Statisticians“Big Data” and the  Challenges for Statisticians
“Big Data” and the Challenges for StatisticiansSetia Pramana
 
Getting a Scholarship, how?
Getting a Scholarship, how?Getting a Scholarship, how?
Getting a Scholarship, how?Setia Pramana
 
Kehidupan sehari-hari dengan Personnummer atau SIN Single Identity Number
Kehidupan sehari-hari dengan Personnummer atau SIN Single Identity NumberKehidupan sehari-hari dengan Personnummer atau SIN Single Identity Number
Kehidupan sehari-hari dengan Personnummer atau SIN Single Identity NumberSetia Pramana
 
Research possibilities with the Personal Identification Number (person nummer...
Research possibilities with the Personal Identification Number (person nummer...Research possibilities with the Personal Identification Number (person nummer...
Research possibilities with the Personal Identification Number (person nummer...Setia Pramana
 
Developing R Graphical User Interfaces
Developing R Graphical User InterfacesDeveloping R Graphical User Interfaces
Developing R Graphical User InterfacesSetia Pramana
 
Academia vs industry
Academia vs industryAcademia vs industry
Academia vs industrySetia Pramana
 

More from Setia Pramana (20)

Big data for official statistics @ Konferensi Big Data Indonesia 2016
Big data for official statistics @ Konferensi Big Data Indonesia 2016 Big data for official statistics @ Konferensi Big Data Indonesia 2016
Big data for official statistics @ Konferensi Big Data Indonesia 2016
 
Resampling methods
Resampling methodsResampling methods
Resampling methods
 
Introduction to Computational Statistics
Introduction to Computational StatisticsIntroduction to Computational Statistics
Introduction to Computational Statistics
 
Bioinformatics I-4 lecture
Bioinformatics I-4 lectureBioinformatics I-4 lecture
Bioinformatics I-4 lecture
 
Correlation and Regression Analysis using SPSS and Microsoft Excel
Correlation and Regression Analysis using SPSS and Microsoft ExcelCorrelation and Regression Analysis using SPSS and Microsoft Excel
Correlation and Regression Analysis using SPSS and Microsoft Excel
 
Pengalaman Menjadi Mahasiswa Muslim di Eropa
Pengalaman Menjadi Mahasiswa Muslim di EropaPengalaman Menjadi Mahasiswa Muslim di Eropa
Pengalaman Menjadi Mahasiswa Muslim di Eropa
 
Multivariate data analysis
Multivariate data analysisMultivariate data analysis
Multivariate data analysis
 
Molecular Subtyping of Breast Cancer and Somatic Mutation Discovery Using DNA...
Molecular Subtyping of Breast Cancer and Somatic Mutation Discovery Using DNA...Molecular Subtyping of Breast Cancer and Somatic Mutation Discovery Using DNA...
Molecular Subtyping of Breast Cancer and Somatic Mutation Discovery Using DNA...
 
The Role of The Statisticians in Personalized Medicine: An Overview of Stati...
The Role of The Statisticians in Personalized Medicine:  An Overview of Stati...The Role of The Statisticians in Personalized Medicine:  An Overview of Stati...
The Role of The Statisticians in Personalized Medicine: An Overview of Stati...
 
Introduction to R
Introduction to RIntroduction to R
Introduction to R
 
High throughput Data Analysis
High throughput Data AnalysisHigh throughput Data Analysis
High throughput Data Analysis
 
Research Methods for Computational Statistics
Research Methods for Computational StatisticsResearch Methods for Computational Statistics
Research Methods for Computational Statistics
 
Survival Data Analysis for Sekolah Tinggi Ilmu Statistik Jakarta
Survival Data Analysis for Sekolah Tinggi Ilmu Statistik JakartaSurvival Data Analysis for Sekolah Tinggi Ilmu Statistik Jakarta
Survival Data Analysis for Sekolah Tinggi Ilmu Statistik Jakarta
 
The Role of Statistician in Personalized Medicine: An Overview of Statistical...
The Role of Statistician in Personalized Medicine: An Overview of Statistical...The Role of Statistician in Personalized Medicine: An Overview of Statistical...
The Role of Statistician in Personalized Medicine: An Overview of Statistical...
 
“Big Data” and the Challenges for Statisticians
“Big Data” and the  Challenges for Statisticians“Big Data” and the  Challenges for Statisticians
“Big Data” and the Challenges for Statisticians
 
Getting a Scholarship, how?
Getting a Scholarship, how?Getting a Scholarship, how?
Getting a Scholarship, how?
 
Kehidupan sehari-hari dengan Personnummer atau SIN Single Identity Number
Kehidupan sehari-hari dengan Personnummer atau SIN Single Identity NumberKehidupan sehari-hari dengan Personnummer atau SIN Single Identity Number
Kehidupan sehari-hari dengan Personnummer atau SIN Single Identity Number
 
Research possibilities with the Personal Identification Number (person nummer...
Research possibilities with the Personal Identification Number (person nummer...Research possibilities with the Personal Identification Number (person nummer...
Research possibilities with the Personal Identification Number (person nummer...
 
Developing R Graphical User Interfaces
Developing R Graphical User InterfacesDeveloping R Graphical User Interfaces
Developing R Graphical User Interfaces
 
Academia vs industry
Academia vs industryAcademia vs industry
Academia vs industry
 

Recently uploaded

1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdfQucHHunhnh
 
microwave assisted reaction. General introduction
microwave assisted reaction. General introductionmicrowave assisted reaction. General introduction
microwave assisted reaction. General introductionMaksud Ahmed
 
social pharmacy d-pharm 1st year by Pragati K. Mahajan
social pharmacy d-pharm 1st year by Pragati K. Mahajansocial pharmacy d-pharm 1st year by Pragati K. Mahajan
social pharmacy d-pharm 1st year by Pragati K. Mahajanpragatimahajan3
 
Web & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdfWeb & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdfJayanti Pande
 
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdfBASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdfSoniaTolstoy
 
Accessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactAccessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactdawncurless
 
Paris 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activityParis 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activityGeoBlogs
 
Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104misteraugie
 
APM Welcome, APM North West Network Conference, Synergies Across Sectors
APM Welcome, APM North West Network Conference, Synergies Across SectorsAPM Welcome, APM North West Network Conference, Synergies Across Sectors
APM Welcome, APM North West Network Conference, Synergies Across SectorsAssociation for Project Management
 
JAPAN: ORGANISATION OF PMDA, PHARMACEUTICAL LAWS & REGULATIONS, TYPES OF REGI...
JAPAN: ORGANISATION OF PMDA, PHARMACEUTICAL LAWS & REGULATIONS, TYPES OF REGI...JAPAN: ORGANISATION OF PMDA, PHARMACEUTICAL LAWS & REGULATIONS, TYPES OF REGI...
JAPAN: ORGANISATION OF PMDA, PHARMACEUTICAL LAWS & REGULATIONS, TYPES OF REGI...anjaliyadav012327
 
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...Krashi Coaching
 
Arihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdfArihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdfchloefrazer622
 
1029-Danh muc Sach Giao Khoa khoi 6.pdf
1029-Danh muc Sach Giao Khoa khoi  6.pdf1029-Danh muc Sach Giao Khoa khoi  6.pdf
1029-Danh muc Sach Giao Khoa khoi 6.pdfQucHHunhnh
 
Separation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and ActinidesSeparation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and ActinidesFatimaKhan178732
 
Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3JemimahLaneBuaron
 
Interactive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communicationInteractive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communicationnomboosow
 
Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111Sapana Sha
 
Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17Celine George
 

Recently uploaded (20)

1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdf
 
microwave assisted reaction. General introduction
microwave assisted reaction. General introductionmicrowave assisted reaction. General introduction
microwave assisted reaction. General introduction
 
Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"
Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"
Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"
 
social pharmacy d-pharm 1st year by Pragati K. Mahajan
social pharmacy d-pharm 1st year by Pragati K. Mahajansocial pharmacy d-pharm 1st year by Pragati K. Mahajan
social pharmacy d-pharm 1st year by Pragati K. Mahajan
 
Web & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdfWeb & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdf
 
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdfBASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdf
 
Accessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactAccessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impact
 
Paris 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activityParis 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activity
 
Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104
 
APM Welcome, APM North West Network Conference, Synergies Across Sectors
APM Welcome, APM North West Network Conference, Synergies Across SectorsAPM Welcome, APM North West Network Conference, Synergies Across Sectors
APM Welcome, APM North West Network Conference, Synergies Across Sectors
 
JAPAN: ORGANISATION OF PMDA, PHARMACEUTICAL LAWS & REGULATIONS, TYPES OF REGI...
JAPAN: ORGANISATION OF PMDA, PHARMACEUTICAL LAWS & REGULATIONS, TYPES OF REGI...JAPAN: ORGANISATION OF PMDA, PHARMACEUTICAL LAWS & REGULATIONS, TYPES OF REGI...
JAPAN: ORGANISATION OF PMDA, PHARMACEUTICAL LAWS & REGULATIONS, TYPES OF REGI...
 
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
 
Arihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdfArihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdf
 
Advance Mobile Application Development class 07
Advance Mobile Application Development class 07Advance Mobile Application Development class 07
Advance Mobile Application Development class 07
 
1029-Danh muc Sach Giao Khoa khoi 6.pdf
1029-Danh muc Sach Giao Khoa khoi  6.pdf1029-Danh muc Sach Giao Khoa khoi  6.pdf
1029-Danh muc Sach Giao Khoa khoi 6.pdf
 
Separation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and ActinidesSeparation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and Actinides
 
Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3
 
Interactive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communicationInteractive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communication
 
Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111
 
Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17
 

Classification using L1-Penalized Logistic Regression