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POISSON PRUDHOMME & ASSOC

MONTREAL-Canada

Company Name:
Corporate Name:
POISSON PRUDHOMME & ASSOC
Company Title:  
Company Description:  
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Company Address: 225 Rue Notre-Dame O #200,MONTREAL,QC,Canada 
ZIP Code:
Postal Code:
H2Y1T4 
Telephone Number: 5148444431 
Fax Number: 5142820917 
Website:
 
Email:
 
USA SIC Code(Standard Industrial Classification Code):
738998 
USA SIC Description:
Repossessing Service 
Number of Employees:
10 to 19 
Sales Amount:
$1 to 2.5 million 
Credit History:
Credit Report:
Excellent 
Contact Person:
Fabien PrudHomme 
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Company News:
  • probability - Distribution of Event Times in a Poisson Process . . .
    Normally, everyone talks about the distribution of interarrival times in a Poisson Process are Exponential but what about the distribution of the actual event times?
  • How to Choose Poisson Time Interval - Cross Validated
    A Poisson process is one where mean = var = λ How do you decide what time interval fulfills these criteria when fitting the Poisson distribution to a process? Can all processes be modeled as Poisson
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  • Residuals in poisson regression - Cross Validated
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  • Why is Poisson regression used for count data? - Cross Validated
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  • Derivation of the variance of the Poisson distribution
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  • Poisson or quasi poisson in a regression with count data and . . .
    I have count data (demand offer analysis with counting number of customers, depending on - possibly - many factors) I tried a linear regression with normal errors, but my QQ-plot is not really goo
  • Why Specifically Use Poisson Regression For Count Data?
    Why should Poisson Regression be used for Count Data instead of a "vanilla linear regression"? I understand the basic argument : Count Data is by definition discrete and you would rather use a model in which predictions are always discrete (i e Poisson Regression) but to me, this seems like a formality




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