Survival analysis

Survival analysis

Survival analysis is a branch of statistics for analyzing the expected duration of time until one event occurs, such as death in biological organisms and failure in mechanical systems. This topic is called reliability theory or reliability analysis in engineering, duration analysis or duration modelling in economics, and event history analysis in sociology. Survival analysis attempts to answer certain questions, such as what is the proportion of a population which will survive past a certain time? Of those that survive, at what rate will they die or fail? Can multiple causes of death or failure be taken into account? How do particular circumstances or characteristics increase or decrease the probability of survival? To answer such questions, it is necessary to define "lifetime". In the case of biological survival, death is unambiguous, but for mechanical reliability, failure may not be well-defined, for there may well be mechanical systems in which failure is partial, a matter of degree, or not otherwise localized in time. Even in biological problems, some events (for example, heart attack or other organ failure) may have the same ambiguity. The theory outlined below assumes well-defined events at specific times; other cases may be better treated by models which explicitly account for ambiguous events. More generally, survival analysis involves the modelling of time to event data; in this context, death or failure is considered an "event" in the survival analysis literature – traditionally only a single event occurs for each subject, after which the organism or mechanism is dead or broken. Recurring event or repeated event models relax that assumption. The study of recurring events is relevant in systems reliability, and in many areas of social sciences and medical research. (Wikipedia).

Survival analysis
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Life Tables - [Survival Analysis 3/8]

See all my videos at https://www.zstatistics.com/videos/ Survival Analysis Playlist: https://www.youtube.com/watch?v=v1QqpG0rR1k&list=PLTNMv857s9WUclZLm6OFUW3QcXgRa97jx 0:00 Intro 1:21 Definition and Intuition 7:55 Calculating the Survival Function 13:58 Calculating Life Expectancy 18:20

From playlist Survival Analysis

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Hazard and Survival Functions - [Survival Analysis 5/8]

See all my videos at https://www.zstatistics.com/ Any donations via the Super Thanks button going to the Right To Learn Foundation: https://www.right2learnfoundation.org/about-us/ Survival analysis playlist here: https://youtube.com/playlist?list=PLTNMv857s9WUclZLm6OFUW3QcXgRa97jx 0:00

From playlist Survival Analysis

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Introduction to Survival Analysis [1/8]

See all my videos at http://www.zstatistics.com/videos 0:00 Series Introduction 1:26 Survival Analysis Intuition 4:40 Measuring survival time 7:25 Visualising survival rates 9:24 Applications of survival analysis Analysis of soccer player substitutions in the Spanish soccer league: https

From playlist Survival Analysis

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10b Data Analytics: Spatial Continuity

Lecture on the impact of spatial continuity to motivate characterization and modeling of spatial continuity.

From playlist Data Analytics and Geostatistics

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Mathematica Experts Live: Survival and Reliability Analysis

Andy Ross walks through Mathematica's complete suite of functionality for reliability and survival analysis as part of Mathematica Experts Live: New in Mathematica 9. For more information about Mathematica, please visit: http://www.wolfram.com/mathematica

From playlist Mathematica Experts Live: New in Mathematica 9

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Sigmoid functions for population growth and A.I.

Some elaborations on sigmoid functions. https://en.wikipedia.org/wiki/Sigmoid_function https://www.learnopencv.com/understanding-activation-functions-in-deep-learning/ If you have any questions of want to contribute to code or videos, feel free to write me a message on youtube or get my co

From playlist Analysis

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Statistical Learning: 11.1 Introduction to Survival Data and Censoring

Statistical Learning, featuring Deep Learning, Survival Analysis and Multiple Testing You are able to take Statistical Learning as an online course on EdX, and you are able to choose a verified path and get a certificate for its completion: https://www.edx.org/course/statistical-learning

From playlist Statistical Learning

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Evaluating Time Series Models : Time Series Talk

How do we evaluate our time series models? How can we tell if one model is better than another?

From playlist Time Series Analysis

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Linear regression

Linear regression is used to compare sets or pairs of numerical data points. We use it to find a correlation between variables.

From playlist Learning medical statistics with python and Jupyter notebooks

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Data Science - Part XV - MARS, Logistic Regression, & Survival Analysis

For downloadable versions of these lectures, please go to the following link: http://www.slideshare.net/DerekKane/presentations https://github.com/DerekKane/YouTube-Tutorials This lecture provides an overview on extending the regression concepts brought forth in previous lectures. We wi

From playlist Data Science

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Mathematica Experts Live: Social Networks and Data Science

A panel of Mathematica experts discuss and demonstrate some of the new features of Mathematica 9 in the areas of social network analysis and data science. For more information about Mathematica, please visit: http://www.wolfram.com/mathematica

From playlist Mathematica Experts Live: New in Mathematica 9

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XGBoost: Complete classification steps with Python| data analysis | Supervised Learning | Titanic

In this amazing episode, we'll cover step by step a complete machine learning analysis for classification through the extreme gradient boosting classifierusing the TITANIC DATA SET with python JUPYTER NOTEBOOK. Pandas libraries for data manipulation, matplotlib for creation of graphics, sk

From playlist Python

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Python for Data Analysis: Exploring and Cleaning Data

This video examines a variety of data exploration and preparation tasks you should consider after loading a data a set to prepare it for analysis, an examples of how to perform those tasks in Python. Subscribe: ► https://www.youtube.com/c/DataDaft?sub_confirmation=1 This is lesson 14 of

From playlist Python for Data Analysis

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Kaplan-Meier Curves and Log-rank Test - [Survival Analysis 4/8]

See all my videos at https://www.zstatistics.com/videos/ 0:00 Introduction 1:56 History and Intuition 3:57 Calculation 14:12 Confidence Intervals 22:32 Logrank Test 29:51 Example KM Estimation using R Survival Analysis Playlist here: https://www.youtube.com/playlist?list=PLTNMv857s9WUclZ

From playlist Survival Analysis

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Censoring and Truncation + LOADS OF EXAMPLES - [Survival Analysis 2/8]

See all my videos at https://www.zstatistics.com/videos 0:00 Intro | 0:37 CENSORING | 2:46 Example - Right censoring | 5:18 Example - Left censoring | 6:55 Example - Interval censoring | 8:25 TRUNCATION | 10:07 Example- Left truncation | 11:35 Example - Right truncation | ******Surviva

From playlist Survival Analysis

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Introduction to Regression Analysis

This video introduced analysis and discusses how to determine if a given regression equation is a good model using r and r^2.

From playlist Performing Linear Regression and Correlation

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Rasa Reading Group: Spot The Bot: A Robust & Efficient Framework for Evaluation of Conversational AI

This week we'll start with the paper "Spot The Bot: A Robust and Efficient Framework for the Evaluation of Conversational Dialogue Systems" by Jan Deriu, Don Tuggener, Pius von Daniken, Jon Ander Campos, Alvaro Rodrigo, Thiziri Belkacem, Aitor Soroa, Eneko Agirre and Mark Cieliebak from EM

From playlist Rasa Reading Group

Related pages

Logrank test | Kaplan–Meier estimator | Quantile | Censoring (statistics) | Accelerated failure time model | Gamma distribution | Statistics | Chi-squared distribution | Probability density function | Differentiable function | Bootstrapping (statistics) | Exponential distribution | Probability | Survival function | Bathtub curve | Time | Proportional hazards model | Weibull distribution | Bayesian survival analysis | Exponential-logarithmic distribution | Generalized gamma distribution | Median | Force of mortality | Variance | Mean time to failure | Hazard function | Log-logistic distribution | Nelson–Aalen estimator | Life table | Likelihood function | Conditional probability | Actuarial science | Probability distribution | Mortality rate | Frequency of exceedance | Credit risk | Random variable | Survival rate | Expected value | Binomial distribution | Integration by parts | Residence time (statistics) | Truncation (statistics) | Cell survival curve | Failure rate | Demography