READY SIGNAL CONTROL DATA

Freight Trucking Employees NY- Not Seas Adj

Why Use This Data Source In Your Models?

Total employees in general freight trucking in New York measures the number of persons 16 years of age or older working in freight trucking positions in the state of New York. This indicates population size and occupation opportunity.

Freight Trucking Employees NY- Not Seas Adj

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Suggested Treatment:

The data shows auto correlation and seasonality. The data should be differenced and seasonally adjusted.

Grain Transformation:

Data is unable to be distributed by time or geography. The roll up method used is Weighted Average.

Source:
U.S. Bureau of Labor Statistics

Release:
Employment Situation

Units:
Thousands of Persons, Not Seasonally Adjusted

Frequency:
Monthly

Available Through:
09/30/2022

Suggested Treatment:

The data shows auto correlation and seasonality. The data should be differenced and seasonally adjusted.

Grain Transformation:

Data is unable to be distributed by time or geography. The roll up method used is Weighted Average.

Auto Correlation Analysis:

Data shows auto correlation indicating a need for differencing

The ACF indicates 1 order differencing is appropriate.

Further differencing is reccommended

Trend Analysis:

The Kwiatkowski-Phillips-Schmidt-Shin (KPSS) test, KPSS Trend = 0.12 p-value = 0.10 indicates that the data is stationary.

Distribution Analysis:

The Shapiro-Wilk test returned W = 0.97 with a p-value =0.06 indicating the data follows a normal distribution.

A skewness score of -0.46 indicates the data are fairly symmetrical.

Hartigan's dip test score of 0.05 with a p-value of 0.05 inidcates the data is multimodal

Statistics (Pearson P/ df, lower => more normal)

No transform
1.37
Box-cox
1.35
Log_b(x-a)
1.39
sqrt(x+a)
1.37
exp(x)
1.49
arcsinh(x)
1.39
Yeo-Johnson
1.37
OrderNorm
1.31

Auto Correlation Function

Auto Correlation Function After Differencing

Partial Auto Correlation Function

Seasonal Impact

Seasonal and Trend Decompostion


Citation:

Federal Reserve Bank of St. Louis and U.S. Bureau of Labor Statistics, All Employees: General Freight Trucking in New York [SMU36000004348410001], retrieved from FRED, Federal Reserve Bank of St. Louis; https://fred.stlouisfed.org/series/SMU36000004348410001, December 15, 2019.

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