One of the problems of navigating an autonomous car through a city is to extract *robust signals* in the face of all the *noise* that is present in the different sensors. Just taking something like an arithmetic mean of all the data points could possibly end in a catastrophe: if a part of a wall looks similar to the street and the algorithm calculates an average trajectory of the two this would end in leaving the road and possibly crashing into pedestrians. So we need some robust algorithm to get rid of the noise. The area of statistics that especially deals with such problems is called *robust statistics* and the methods used therein *robust estimation*.

Continue reading “Separating the Signal from the Noise: Robust Statistics for Pedestrians”

# Category: R-Bloggers

Posts that are contributed to R-Bloggers

## Symbolic Regression, Genetic Programming… or if Kepler had R

A few weeks ago we published a post about using the power of the *evolutionary method* for *optimization* (see Evolution works!). In this post we will go a step further, so read on…

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## Inverse Statistics – and how to create Gain-Loss Asymmetry plots in R

Asset returns have certain statistical properties, also called *stylized facts*. Important ones are:

**Absence of autocorrelation**: basically the direction of the return of one day doesn’t tell you anything useful about the direction of the next day.**Fat tails**: returns are not normal, i.e. there are many more extreme events than there would be if returns were normal.**Volatility clustering**: basically financial markets exhibit high-volatility and low-volatility regimes.**Leverage effect**: high-volatility regimes tend to coincide with falling prices and vice versa.

Continue reading “Inverse Statistics – and how to create Gain-Loss Asymmetry plots in R”

## Learning Data Science: Predicting Income Brackets

As promised in the post Learning Data Science: Modelling Basics we will now go a step further and try to predict income brackets with real world data and different modelling approaches. We will learn a thing or two along the way, e.g. about the so-called *Accuracy-Interpretability Trade-Off*, so read on…

Continue reading “Learning Data Science: Predicting Income Brackets”

## Learning R: The Collatz Conjecture

In this post, we will see that a little bit of simple R code can go a very long way! So let’s get started!

Continue reading “Learning R: The Collatz Conjecture”

## Evolution works!

Hamlet:

Do you see yonder cloud that’s almost in shape of a camel?

Polonius:By the mass, and ’tis like a camel, indeed.

Hamlet:Methinks it is like a weasel.

fromHamletbyWilliam Shakespeare

## Customers who bought…

One of the classic examples in data science (called data mining at the time) is the beer and diapers example: when a big supermarket chain started analyzing their sales data they encountered not only trivial patterns, like toothbrushes and toothpaste being bought together but also quite strange combinations like beer and diapers. Now, the trivial ones are reassuring that the method works but what about the more extravagant ones? Does it mean that young parents are alcoholics? Or that instead of breastfeeding they give their babies beer? Obviously, they had to get to the bottom of this.

Continue reading “Customers who bought…”

## To understand Recursion you have to understand Recursion…

*Sorting* values is one of the bread and butter tasks in computer science: this post uses it as a use case to learn what *recursion* is all about. It starts with some nerd humour… and ends with some more, so read on!

Continue reading “To understand Recursion you have to understand Recursion…”

## So, what is AI *really?*

One of the topics that is totally hyped at the moment is obviously *Artificial Intelligence* or *AI* for short. There are many self-proclaimed experts running around trying to sell you the stuff they have been doing all along under this new label.

When you ask them what AI means you will normally get some convoluted explanations (which is a good sign that they don’t get it themselves) and some “success stories”. The truth is that many of those talking heads don’t really know what they are talking about, yet happen to have a friend who knows somebody who picked up a book at the local station bookshop… ok, that was nasty but unfortunately often not too far away from the truth.

So, what is AI *really?* This post tries to give some guidance, so read on!

Continue reading “So, what is AI *really?*“

## Learning Data Science: Modelling Basics

Data Science is all about building good models, so let us start by building a very simple model: we want to predict monthly income from age (in a later post we will see that age is indeed a good predictor for income).

Continue reading “Learning Data Science: Modelling Basics”