Post on 18-Dec-2014
description
Exploiting Your Data
Quantified Self
22 March 2012Akram Najjar
This talk is en “eye opener”We will Not discuss Techniques or “How”
Data is Analyzed!
We will Only talk about “What” such methods can give us
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What Methods can you Apply to Your Data?
A. The Bell Shaped Curve (Normal Distribution)
B. Correlation of two variables
C. Forecasting using Simple Linear Regression (Best Line of Fit)
D. Statistical Process Control
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Other Tools that work directly on Data . . . .
Goodness of Fit testing
Independence Testing
Moving Averages and Exponential Smoothing
Non-Linear Regression (polynomial, exponential, logarithmic)
Weighted Index Scoring
Excel: The Pivot Table
Excel: Conditional Formatting
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A. The Bell Shaped Curve (The Gaussian or Normal Distribution)
Useful when you have a lot of data
Prepare a Bar Chart or a Frequency Table
Most likely, they will plot as a Bell Shaped Curve (Normal/Gauss Curve)
Example: Measurements of most natural variables
Example: Measurements of most manufactured items
Prepare a frequency table of your data
How many times did you get a specific value?
Out of 200 measurements, how many times was your Systolic Blood Pressure = 110,115, 120, 125, 130, 135, 140 . .
How
man
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Here are 24 Systolic Blood Pressure Measurements – They Look like a Bell Curve
Probability of Pressure > 125 = (4 + 2) / 24 = 1/4 = 25%
Probability of Pressure > 125 = (4 + 2) / 24 = 1/4 = 25%
If we had 201 measurements . . . .
Total Count in Bars = Area of Bars = Probability > 122= 15.83%
The Bell Shaped Curve is completely defined by:
a) Average (115) of the data
b) Standard deviation (7) of the data. It indicates how spread is our data from the average.
(Approx 70% of observations are between 115-7 and 115+7)
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What do we get if we use the Bell Shaped Curve (Normal Distribution)?
Benefit 1: measuring the spread of our data
Benefit 2: we can now compare specific scores in two different population (next slide)
Benefit 3: if we know the measure, we can compute the probability of it happening
Benefit 4: if we know the probability, we can work out the cut off measure that will give it
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If I have the same score 78 in Courses A and B, can I say I am doing the same in both?
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Benefits 3 and 4
Given a specific measurement or range, what is the probability of their occurrence? Probability I will get a fever of more than 38 degrees?
Probability flights will be more than 30 minutes late?
Probability my systolic is > 122
Given the probability, what is the cutoff measurement? I want to remain at a sugar level representing the top 15%
allowed, what is the level related to that?
If Human Resources want the top 15% results, what is the passing grade?
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B. Correlation
If we have two sets of data, how are they related?
Example: Blood Pressure vs Intake of Salt
Example: Advertising Expenditure vs Sales Revenue
Example: Hours walked per day vs Weight in Kilograms
What is the direction of the relationship? Direct or inverse?
What is the strength of the relationship? Correlation
We use the Correlation Function (Demonstrate in Excel)
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C. Forecasting using Simple LinearRegression (Best Line of Fit)
If we have an independent variable (X): Sugar Intake
And a dependent variable (Y): Weight
What is the relationship that allows us to forecast Weight for different Sugar Intakes?
We need two columns: X and Y
Simple Linear Regression allows us to find the Best Line to fit our data
Regression finds the Best Line that Fits our Observations
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Which Straight Line Best Fits our Observations?
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Multiple Regression: allows us to find the Equation Y = aX1 + bX2 + cX3 + d
YX1
X2 X3
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D. Statistical Process Control (SPC)
The Purpose of SPC is to Monitor a Process
SPC allows us to Check if a variable is behaving properly Over time
Over different locations/departments
Over different events
Over different samples
Control Charts were first used in Bell Labs (1924)
Although mostly used in industry SPC can be used in any sector
The General Form of a Control Chart: 4 Components
1) UCL : Upper Control Limit
3) LCL : Lower Lower Limit
2) AL : Average Line
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The IDs of the Samples - - - - - OR The Time Series
Our
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4) Process Data
This Process is “In control”
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Upper Limit
Lower Limit
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This Process is Regularly “Out of Control”
Look for an explanation INSIDE the system
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Look for an explanation OUTSIDE the system
This Process is Irregularly “Out of Control”
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Look for an explanation OUTSIDE the system
This Process is Irregularly “Out of Control”.
Trends in either direction of 5 or
more points
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Look for an explanation OUTSIDE the system
The 7 Point Rule: there is a problem if 7 points in a row (Or more) are above the average or below it
Types of Control ChartsType The Measurement The Series ExampleX-Chart Single Variable Several Measurements Blood Pressure, Sugar
Levels, Cholestrol, Time I wake up
X-Chart Average of a Sample Several Samples We plot the average age in each 20 Families
R-Chart A range of values: Hi measurement - Lo measurement
Several Samples Hi/Lo fever for 20 days. We plot the range OR we measure the Hi/Lo level of contaminants in 20 rivers.
p-Chart Proportion in a sample Several Samples Football teams: how many in each are foreign?
c-Chart Count in a sample Several Samples How many errors in each report?
Thank youfor your kind
attention