SlideShare una empresa de Scribd logo
1 de 38
Descargar para leer sin conexión
Crash course in probability theory and
         statistics – part 2




         Machine Learning, Wed Apr 16, 2008
Motivation
All models are wrong, but some are useful.

This lecture introduces distributions that have proven
useful in constructing models.
Densities, statistics and estimators
A probability (density) is any function X a p(X ) that
satisfies the probability theory axioms.

A statistic is any function of observed data x a f(x).

An estimator is a statistic used for estimating a parameter
of the probability density x a m.
Estimators
Assume D = {x1,x2,...,xN} are independent, identically
distributed (i.i.d) outcomes of our experiments
(observed data).

Desirable properties of an estimator are:

                                            for N®¥

and
                                            (unbiased)
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2
Crash course in probability theory and statistics – part 2

Más contenido relacionado

La actualidad más candente

Statistical Pattern recognition(1)
Statistical Pattern recognition(1)Statistical Pattern recognition(1)
Statistical Pattern recognition(1)Syed Atif Naseem
 
Implement principal component analysis (PCA) in python from scratch
Implement principal component analysis (PCA) in python from scratchImplement principal component analysis (PCA) in python from scratch
Implement principal component analysis (PCA) in python from scratchEshanAgarwal4
 
Welcome to International Journal of Engineering Research and Development (IJERD)
Welcome to International Journal of Engineering Research and Development (IJERD)Welcome to International Journal of Engineering Research and Development (IJERD)
Welcome to International Journal of Engineering Research and Development (IJERD)IJERD Editor
 
Machine learning algorithms
Machine learning algorithmsMachine learning algorithms
Machine learning algorithmsShalitha Suranga
 
A Fairness-aware Machine Learning Interface for End-to-end Discrimination Dis...
A Fairness-aware Machine Learning Interface for End-to-end Discrimination Dis...A Fairness-aware Machine Learning Interface for End-to-end Discrimination Dis...
A Fairness-aware Machine Learning Interface for End-to-end Discrimination Dis...wajrcs
 
Principal Component Analysis and Clustering
Principal Component Analysis and ClusteringPrincipal Component Analysis and Clustering
Principal Component Analysis and ClusteringUsha Vijay
 
06-07 Chapter interpolation in MATLAB
06-07 Chapter interpolation in MATLAB06-07 Chapter interpolation in MATLAB
06-07 Chapter interpolation in MATLABDr. Mohammed Danish
 
Anomaly Detection
Anomaly DetectionAnomaly Detection
Anomaly Detectionguest0edcaf
 
Real Time ImageVideo Processing with Applications in Face Recognition
Real Time ImageVideo Processing with  Applications in Face Recognition   Real Time ImageVideo Processing with  Applications in Face Recognition
Real Time ImageVideo Processing with Applications in Face Recognition Kamal Singh Lodhi
 
Meta Learning Shared Hierarchies
Meta Learning Shared HierarchiesMeta Learning Shared Hierarchies
Meta Learning Shared HierarchiesYoonho Lee
 
Anomaly detection: Core Techniques and Advances in Big Data and Deep Learning
Anomaly detection: Core Techniques and Advances in Big Data and Deep LearningAnomaly detection: Core Techniques and Advances in Big Data and Deep Learning
Anomaly detection: Core Techniques and Advances in Big Data and Deep LearningQuantUniversity
 

La actualidad más candente (19)

Statistical Pattern recognition(1)
Statistical Pattern recognition(1)Statistical Pattern recognition(1)
Statistical Pattern recognition(1)
 
Extrapolation
ExtrapolationExtrapolation
Extrapolation
 
Implement principal component analysis (PCA) in python from scratch
Implement principal component analysis (PCA) in python from scratchImplement principal component analysis (PCA) in python from scratch
Implement principal component analysis (PCA) in python from scratch
 
Array sheet
Array sheet Array sheet
Array sheet
 
Principal Component Analysis
Principal Component AnalysisPrincipal Component Analysis
Principal Component Analysis
 
Welcome to International Journal of Engineering Research and Development (IJERD)
Welcome to International Journal of Engineering Research and Development (IJERD)Welcome to International Journal of Engineering Research and Development (IJERD)
Welcome to International Journal of Engineering Research and Development (IJERD)
 
Mscs discussion
Mscs discussionMscs discussion
Mscs discussion
 
Pca ppt
Pca pptPca ppt
Pca ppt
 
Machine learning algorithms
Machine learning algorithmsMachine learning algorithms
Machine learning algorithms
 
A Fairness-aware Machine Learning Interface for End-to-end Discrimination Dis...
A Fairness-aware Machine Learning Interface for End-to-end Discrimination Dis...A Fairness-aware Machine Learning Interface for End-to-end Discrimination Dis...
A Fairness-aware Machine Learning Interface for End-to-end Discrimination Dis...
 
Principal Component Analysis and Clustering
Principal Component Analysis and ClusteringPrincipal Component Analysis and Clustering
Principal Component Analysis and Clustering
 
06-07 Chapter interpolation in MATLAB
06-07 Chapter interpolation in MATLAB06-07 Chapter interpolation in MATLAB
06-07 Chapter interpolation in MATLAB
 
Anomaly Detection
Anomaly DetectionAnomaly Detection
Anomaly Detection
 
Pca
PcaPca
Pca
 
Real Time ImageVideo Processing with Applications in Face Recognition
Real Time ImageVideo Processing with  Applications in Face Recognition   Real Time ImageVideo Processing with  Applications in Face Recognition
Real Time ImageVideo Processing with Applications in Face Recognition
 
Machine Learning Seminar
Machine Learning SeminarMachine Learning Seminar
Machine Learning Seminar
 
Meta Learning Shared Hierarchies
Meta Learning Shared HierarchiesMeta Learning Shared Hierarchies
Meta Learning Shared Hierarchies
 
Anomaly detection: Core Techniques and Advances in Big Data and Deep Learning
Anomaly detection: Core Techniques and Advances in Big Data and Deep LearningAnomaly detection: Core Techniques and Advances in Big Data and Deep Learning
Anomaly detection: Core Techniques and Advances in Big Data and Deep Learning
 
Pca analysis
Pca analysisPca analysis
Pca analysis
 

Destacado

6 Técnica Relação Forçada
6 Técnica  Relação Forçada6 Técnica  Relação Forçada
6 Técnica Relação Forçadatiago perdigao
 
Neural Networks
Neural NetworksNeural Networks
Neural Networksmailund
 
Association mapping using local genealogies
Association mapping using local genealogiesAssociation mapping using local genealogies
Association mapping using local genealogiesmailund
 
Linear Regression Ex
Linear Regression ExLinear Regression Ex
Linear Regression Exmailund
 
Ku 05 08 2009
Ku 05 08 2009Ku 05 08 2009
Ku 05 08 2009mailund
 
交點高雄Vol.4 - 林孟正 - 改變生活的可能性
交點高雄Vol.4 - 林孟正 - 改變生活的可能性交點高雄Vol.4 - 林孟正 - 改變生活的可能性
交點高雄Vol.4 - 林孟正 - 改變生活的可能性交點
 
Probability And Stats Intro
Probability And Stats IntroProbability And Stats Intro
Probability And Stats Intromailund
 

Destacado (7)

6 Técnica Relação Forçada
6 Técnica  Relação Forçada6 Técnica  Relação Forçada
6 Técnica Relação Forçada
 
Neural Networks
Neural NetworksNeural Networks
Neural Networks
 
Association mapping using local genealogies
Association mapping using local genealogiesAssociation mapping using local genealogies
Association mapping using local genealogies
 
Linear Regression Ex
Linear Regression ExLinear Regression Ex
Linear Regression Ex
 
Ku 05 08 2009
Ku 05 08 2009Ku 05 08 2009
Ku 05 08 2009
 
交點高雄Vol.4 - 林孟正 - 改變生活的可能性
交點高雄Vol.4 - 林孟正 - 改變生活的可能性交點高雄Vol.4 - 林孟正 - 改變生活的可能性
交點高雄Vol.4 - 林孟正 - 改變生活的可能性
 
Probability And Stats Intro
Probability And Stats IntroProbability And Stats Intro
Probability And Stats Intro
 

Similar a Crash course in probability theory and statistics – part 2

RECENT ADVANCES in PREDICTIVE (MACHINE) LEARNING
RECENT ADVANCES in PREDICTIVE (MACHINE) LEARNINGRECENT ADVANCES in PREDICTIVE (MACHINE) LEARNING
RECENT ADVANCES in PREDICTIVE (MACHINE) LEARNINGbutest
 
Statistical Machine________ Learning.ppt
Statistical Machine________ Learning.pptStatistical Machine________ Learning.ppt
Statistical Machine________ Learning.pptSandeepGupta229023
 
Advanced Econometrics L5-6.pptx
Advanced Econometrics L5-6.pptxAdvanced Econometrics L5-6.pptx
Advanced Econometrics L5-6.pptxakashayosha
 
Optimistic decision making using an
Optimistic decision making using anOptimistic decision making using an
Optimistic decision making using anijaia
 
V. pacáková, d. brebera
V. pacáková, d. breberaV. pacáková, d. brebera
V. pacáková, d. breberalogyalaa
 
Statistics Applied to Biomedical Sciences
Statistics Applied to Biomedical SciencesStatistics Applied to Biomedical Sciences
Statistics Applied to Biomedical SciencesLuca Massarelli
 
AP Statistic and Probability 6.1 (1).ppt
AP Statistic and Probability 6.1 (1).pptAP Statistic and Probability 6.1 (1).ppt
AP Statistic and Probability 6.1 (1).pptAlfredNavea1
 
Classifiers
ClassifiersClassifiers
ClassifiersAyurdata
 
Machine learning and Neural Networks
Machine learning and Neural NetworksMachine learning and Neural Networks
Machine learning and Neural Networksbutest
 
Non-parametric analysis of models and data
Non-parametric analysis of models and dataNon-parametric analysis of models and data
Non-parametric analysis of models and datahaharrington
 
Machine Learning and Artificial Neural Networks.ppt
Machine Learning and Artificial Neural Networks.pptMachine Learning and Artificial Neural Networks.ppt
Machine Learning and Artificial Neural Networks.pptAnshika865276
 
Principle of Maximum Entropy
Principle of Maximum EntropyPrinciple of Maximum Entropy
Principle of Maximum EntropyJiawang Liu
 
Monte Carlo Berkeley.pptx
Monte Carlo Berkeley.pptxMonte Carlo Berkeley.pptx
Monte Carlo Berkeley.pptxHaibinSu2
 
Aaron Roth, Associate Professor, University of Pennsylvania, at MLconf NYC 2017
Aaron Roth, Associate Professor, University of Pennsylvania, at MLconf NYC 2017Aaron Roth, Associate Professor, University of Pennsylvania, at MLconf NYC 2017
Aaron Roth, Associate Professor, University of Pennsylvania, at MLconf NYC 2017MLconf
 
Cheatsheet unsupervised-learning
Cheatsheet unsupervised-learningCheatsheet unsupervised-learning
Cheatsheet unsupervised-learningSteve Nouri
 

Similar a Crash course in probability theory and statistics – part 2 (20)

RECENT ADVANCES in PREDICTIVE (MACHINE) LEARNING
RECENT ADVANCES in PREDICTIVE (MACHINE) LEARNINGRECENT ADVANCES in PREDICTIVE (MACHINE) LEARNING
RECENT ADVANCES in PREDICTIVE (MACHINE) LEARNING
 
Statistical Machine________ Learning.ppt
Statistical Machine________ Learning.pptStatistical Machine________ Learning.ppt
Statistical Machine________ Learning.ppt
 
Advanced Econometrics L5-6.pptx
Advanced Econometrics L5-6.pptxAdvanced Econometrics L5-6.pptx
Advanced Econometrics L5-6.pptx
 
Optimistic decision making using an
Optimistic decision making using anOptimistic decision making using an
Optimistic decision making using an
 
V. pacáková, d. brebera
V. pacáková, d. breberaV. pacáková, d. brebera
V. pacáková, d. brebera
 
Statistics Applied to Biomedical Sciences
Statistics Applied to Biomedical SciencesStatistics Applied to Biomedical Sciences
Statistics Applied to Biomedical Sciences
 
Lausanne 2019 #1
Lausanne 2019 #1Lausanne 2019 #1
Lausanne 2019 #1
 
AP Statistic and Probability 6.1 (1).ppt
AP Statistic and Probability 6.1 (1).pptAP Statistic and Probability 6.1 (1).ppt
AP Statistic and Probability 6.1 (1).ppt
 
Classifiers
ClassifiersClassifiers
Classifiers
 
nnml.ppt
nnml.pptnnml.ppt
nnml.ppt
 
Machine learning and Neural Networks
Machine learning and Neural NetworksMachine learning and Neural Networks
Machine learning and Neural Networks
 
Non-parametric analysis of models and data
Non-parametric analysis of models and dataNon-parametric analysis of models and data
Non-parametric analysis of models and data
 
Machine Learning and Artificial Neural Networks.ppt
Machine Learning and Artificial Neural Networks.pptMachine Learning and Artificial Neural Networks.ppt
Machine Learning and Artificial Neural Networks.ppt
 
Principle of Maximum Entropy
Principle of Maximum EntropyPrinciple of Maximum Entropy
Principle of Maximum Entropy
 
Monte Carlo Berkeley.pptx
Monte Carlo Berkeley.pptxMonte Carlo Berkeley.pptx
Monte Carlo Berkeley.pptx
 
PhysicsSIG2008-01-Seneviratne
PhysicsSIG2008-01-SeneviratnePhysicsSIG2008-01-Seneviratne
PhysicsSIG2008-01-Seneviratne
 
Aaron Roth, Associate Professor, University of Pennsylvania, at MLconf NYC 2017
Aaron Roth, Associate Professor, University of Pennsylvania, at MLconf NYC 2017Aaron Roth, Associate Professor, University of Pennsylvania, at MLconf NYC 2017
Aaron Roth, Associate Professor, University of Pennsylvania, at MLconf NYC 2017
 
ML-04.pdf
ML-04.pdfML-04.pdf
ML-04.pdf
 
Machine Learning
Machine LearningMachine Learning
Machine Learning
 
Cheatsheet unsupervised-learning
Cheatsheet unsupervised-learningCheatsheet unsupervised-learning
Cheatsheet unsupervised-learning
 

Más de mailund

Chapter 9 divide and conquer handouts with notes
Chapter 9   divide and conquer handouts with notesChapter 9   divide and conquer handouts with notes
Chapter 9 divide and conquer handouts with notesmailund
 
Chapter 9 divide and conquer handouts
Chapter 9   divide and conquer handoutsChapter 9   divide and conquer handouts
Chapter 9 divide and conquer handoutsmailund
 
Chapter 9 divide and conquer
Chapter 9   divide and conquerChapter 9   divide and conquer
Chapter 9 divide and conquermailund
 
Chapter 7 recursion handouts with notes
Chapter 7   recursion handouts with notesChapter 7   recursion handouts with notes
Chapter 7 recursion handouts with notesmailund
 
Chapter 7 recursion handouts
Chapter 7   recursion handoutsChapter 7   recursion handouts
Chapter 7 recursion handoutsmailund
 
Chapter 7 recursion
Chapter 7   recursionChapter 7   recursion
Chapter 7 recursionmailund
 
Chapter 5 searching and sorting handouts with notes
Chapter 5   searching and sorting handouts with notesChapter 5   searching and sorting handouts with notes
Chapter 5 searching and sorting handouts with notesmailund
 
Chapter 5 searching and sorting handouts
Chapter 5   searching and sorting handoutsChapter 5   searching and sorting handouts
Chapter 5 searching and sorting handoutsmailund
 
Chapter 5 searching and sorting
Chapter 5   searching and sortingChapter 5   searching and sorting
Chapter 5 searching and sortingmailund
 
Chapter 4 algorithmic efficiency handouts (with notes)
Chapter 4   algorithmic efficiency handouts (with notes)Chapter 4   algorithmic efficiency handouts (with notes)
Chapter 4 algorithmic efficiency handouts (with notes)mailund
 
Chapter 4 algorithmic efficiency handouts
Chapter 4   algorithmic efficiency handoutsChapter 4   algorithmic efficiency handouts
Chapter 4 algorithmic efficiency handoutsmailund
 
Chapter 4 algorithmic efficiency
Chapter 4   algorithmic efficiencyChapter 4   algorithmic efficiency
Chapter 4 algorithmic efficiencymailund
 
Chapter 3 introduction to algorithms slides
Chapter 3 introduction to algorithms slidesChapter 3 introduction to algorithms slides
Chapter 3 introduction to algorithms slidesmailund
 
Chapter 3 introduction to algorithms handouts (with notes)
Chapter 3 introduction to algorithms handouts (with notes)Chapter 3 introduction to algorithms handouts (with notes)
Chapter 3 introduction to algorithms handouts (with notes)mailund
 
Chapter 3 introduction to algorithms handouts
Chapter 3 introduction to algorithms handoutsChapter 3 introduction to algorithms handouts
Chapter 3 introduction to algorithms handoutsmailund
 
Course Introduction
Course IntroductionCourse Introduction
Course Introductionmailund
 
Linear Classification
Linear ClassificationLinear Classification
Linear Classificationmailund
 
Linear Regression
Linear RegressionLinear Regression
Linear Regressionmailund
 
Presentation at APBC 2007
Presentation at APBC 2007Presentation at APBC 2007
Presentation at APBC 2007mailund
 
Epidemiologisk FredagsmøDe 15 2 2008
Epidemiologisk FredagsmøDe 15 2 2008Epidemiologisk FredagsmøDe 15 2 2008
Epidemiologisk FredagsmøDe 15 2 2008mailund
 

Más de mailund (20)

Chapter 9 divide and conquer handouts with notes
Chapter 9   divide and conquer handouts with notesChapter 9   divide and conquer handouts with notes
Chapter 9 divide and conquer handouts with notes
 
Chapter 9 divide and conquer handouts
Chapter 9   divide and conquer handoutsChapter 9   divide and conquer handouts
Chapter 9 divide and conquer handouts
 
Chapter 9 divide and conquer
Chapter 9   divide and conquerChapter 9   divide and conquer
Chapter 9 divide and conquer
 
Chapter 7 recursion handouts with notes
Chapter 7   recursion handouts with notesChapter 7   recursion handouts with notes
Chapter 7 recursion handouts with notes
 
Chapter 7 recursion handouts
Chapter 7   recursion handoutsChapter 7   recursion handouts
Chapter 7 recursion handouts
 
Chapter 7 recursion
Chapter 7   recursionChapter 7   recursion
Chapter 7 recursion
 
Chapter 5 searching and sorting handouts with notes
Chapter 5   searching and sorting handouts with notesChapter 5   searching and sorting handouts with notes
Chapter 5 searching and sorting handouts with notes
 
Chapter 5 searching and sorting handouts
Chapter 5   searching and sorting handoutsChapter 5   searching and sorting handouts
Chapter 5 searching and sorting handouts
 
Chapter 5 searching and sorting
Chapter 5   searching and sortingChapter 5   searching and sorting
Chapter 5 searching and sorting
 
Chapter 4 algorithmic efficiency handouts (with notes)
Chapter 4   algorithmic efficiency handouts (with notes)Chapter 4   algorithmic efficiency handouts (with notes)
Chapter 4 algorithmic efficiency handouts (with notes)
 
Chapter 4 algorithmic efficiency handouts
Chapter 4   algorithmic efficiency handoutsChapter 4   algorithmic efficiency handouts
Chapter 4 algorithmic efficiency handouts
 
Chapter 4 algorithmic efficiency
Chapter 4   algorithmic efficiencyChapter 4   algorithmic efficiency
Chapter 4 algorithmic efficiency
 
Chapter 3 introduction to algorithms slides
Chapter 3 introduction to algorithms slidesChapter 3 introduction to algorithms slides
Chapter 3 introduction to algorithms slides
 
Chapter 3 introduction to algorithms handouts (with notes)
Chapter 3 introduction to algorithms handouts (with notes)Chapter 3 introduction to algorithms handouts (with notes)
Chapter 3 introduction to algorithms handouts (with notes)
 
Chapter 3 introduction to algorithms handouts
Chapter 3 introduction to algorithms handoutsChapter 3 introduction to algorithms handouts
Chapter 3 introduction to algorithms handouts
 
Course Introduction
Course IntroductionCourse Introduction
Course Introduction
 
Linear Classification
Linear ClassificationLinear Classification
Linear Classification
 
Linear Regression
Linear RegressionLinear Regression
Linear Regression
 
Presentation at APBC 2007
Presentation at APBC 2007Presentation at APBC 2007
Presentation at APBC 2007
 
Epidemiologisk FredagsmøDe 15 2 2008
Epidemiologisk FredagsmøDe 15 2 2008Epidemiologisk FredagsmøDe 15 2 2008
Epidemiologisk FredagsmøDe 15 2 2008
 

Último

Developer Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLDeveloper Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLScyllaDB
 
Training state-of-the-art general text embedding
Training state-of-the-art general text embeddingTraining state-of-the-art general text embedding
Training state-of-the-art general text embeddingZilliz
 
Search Engine Optimization SEO PDF for 2024.pdf
Search Engine Optimization SEO PDF for 2024.pdfSearch Engine Optimization SEO PDF for 2024.pdf
Search Engine Optimization SEO PDF for 2024.pdfRankYa
 
"Debugging python applications inside k8s environment", Andrii Soldatenko
"Debugging python applications inside k8s environment", Andrii Soldatenko"Debugging python applications inside k8s environment", Andrii Soldatenko
"Debugging python applications inside k8s environment", Andrii SoldatenkoFwdays
 
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Patryk Bandurski
 
SIP trunking in Janus @ Kamailio World 2024
SIP trunking in Janus @ Kamailio World 2024SIP trunking in Janus @ Kamailio World 2024
SIP trunking in Janus @ Kamailio World 2024Lorenzo Miniero
 
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)Bun (KitWorks Team Study 노별마루 발표 2024.4.22)
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)Wonjun Hwang
 
Vector Databases 101 - An introduction to the world of Vector Databases
Vector Databases 101 - An introduction to the world of Vector DatabasesVector Databases 101 - An introduction to the world of Vector Databases
Vector Databases 101 - An introduction to the world of Vector DatabasesZilliz
 
DevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenDevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenHervé Boutemy
 
Commit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easyCommit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easyAlfredo García Lavilla
 
Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 3652toLead Limited
 
The Future of Software Development - Devin AI Innovative Approach.pdf
The Future of Software Development - Devin AI Innovative Approach.pdfThe Future of Software Development - Devin AI Innovative Approach.pdf
The Future of Software Development - Devin AI Innovative Approach.pdfSeasiaInfotech2
 
Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?Mattias Andersson
 
Vertex AI Gemini Prompt Engineering Tips
Vertex AI Gemini Prompt Engineering TipsVertex AI Gemini Prompt Engineering Tips
Vertex AI Gemini Prompt Engineering TipsMiki Katsuragi
 
Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!Commit University
 
Powerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time ClashPowerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time Clashcharlottematthew16
 
Gen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdfGen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdfAddepto
 
Unraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfUnraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfAlex Barbosa Coqueiro
 
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)Mark Simos
 

Último (20)

Developer Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLDeveloper Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQL
 
Training state-of-the-art general text embedding
Training state-of-the-art general text embeddingTraining state-of-the-art general text embedding
Training state-of-the-art general text embedding
 
Search Engine Optimization SEO PDF for 2024.pdf
Search Engine Optimization SEO PDF for 2024.pdfSearch Engine Optimization SEO PDF for 2024.pdf
Search Engine Optimization SEO PDF for 2024.pdf
 
"Debugging python applications inside k8s environment", Andrii Soldatenko
"Debugging python applications inside k8s environment", Andrii Soldatenko"Debugging python applications inside k8s environment", Andrii Soldatenko
"Debugging python applications inside k8s environment", Andrii Soldatenko
 
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
 
SIP trunking in Janus @ Kamailio World 2024
SIP trunking in Janus @ Kamailio World 2024SIP trunking in Janus @ Kamailio World 2024
SIP trunking in Janus @ Kamailio World 2024
 
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)Bun (KitWorks Team Study 노별마루 발표 2024.4.22)
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)
 
Vector Databases 101 - An introduction to the world of Vector Databases
Vector Databases 101 - An introduction to the world of Vector DatabasesVector Databases 101 - An introduction to the world of Vector Databases
Vector Databases 101 - An introduction to the world of Vector Databases
 
DevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenDevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache Maven
 
Commit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easyCommit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easy
 
Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365
 
The Future of Software Development - Devin AI Innovative Approach.pdf
The Future of Software Development - Devin AI Innovative Approach.pdfThe Future of Software Development - Devin AI Innovative Approach.pdf
The Future of Software Development - Devin AI Innovative Approach.pdf
 
Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?
 
E-Vehicle_Hacking_by_Parul Sharma_null_owasp.pptx
E-Vehicle_Hacking_by_Parul Sharma_null_owasp.pptxE-Vehicle_Hacking_by_Parul Sharma_null_owasp.pptx
E-Vehicle_Hacking_by_Parul Sharma_null_owasp.pptx
 
Vertex AI Gemini Prompt Engineering Tips
Vertex AI Gemini Prompt Engineering TipsVertex AI Gemini Prompt Engineering Tips
Vertex AI Gemini Prompt Engineering Tips
 
Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!
 
Powerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time ClashPowerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time Clash
 
Gen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdfGen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdf
 
Unraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfUnraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdf
 
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
 

Crash course in probability theory and statistics – part 2

  • 1. Crash course in probability theory and statistics – part 2 Machine Learning, Wed Apr 16, 2008
  • 2. Motivation All models are wrong, but some are useful. This lecture introduces distributions that have proven useful in constructing models.
  • 3. Densities, statistics and estimators A probability (density) is any function X a p(X ) that satisfies the probability theory axioms. A statistic is any function of observed data x a f(x). An estimator is a statistic used for estimating a parameter of the probability density x a m.
  • 4. Estimators Assume D = {x1,x2,...,xN} are independent, identically distributed (i.i.d) outcomes of our experiments (observed data). Desirable properties of an estimator are: for N®¥ and (unbiased)