Back to list of Stocks See Also: Fourier Analysis of WTT, Genetic Algorithms Stock Portfolio Generator,
and Best Months to Buy/Sell Stocks

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Seasonal Analysis of WTT (Wireless Telecom Group)

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Seasonal Analysis

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Notes: "Adjusted Close" means closing price was adjusted for splits
and dividends; Weekly (not daily) Adjusted close price was used for calculations;

Using data from 5/26/1993 to 2/24/2020 for WTT (Wireless Telecom Group), this program was able to calculate the following historical seasonal cycles for this stock:

Historically, the best month to buy WTT is October

Historically, the best month to sell WTT is February

In January, WTT is historically up by 2.18%

In February, WTT is historically up by 3.80%

In March, WTT is historically up by 2.54%

In April, WTT is historically up by 1.45%

In May, WTT is historically up by 1.03%

In June, WTT is historically up by 1.39%

In July, WTT is historically up by 2.64%

In August, WTT is historically down by -4.14%

In September, WTT is historically down by -2.82%

In October, WTT is historically down by -5.04%

In November, WTT is historically down by -3.95%

In December, WTT is historically up by 0.93%

Right click on the graph above to see the menu of operations (download, full screen, etc.)

See Also: Fourier Analysis of WTTGeneral Statistics | |

Number of Data Points | 1397 |

Start Date of Data | 5/26/1993 |

End Date of Data | 2/24/2020 |

Minimum Value of Adjusted Close | 0.26 |

Maximum Value of Adjusted Close | 12.07 |

Average Value of Adjusted Close | 2.48 |

Median Value of Adjusted Close | 1.92 |

Standard Deviation of Adjusted Close | 2.01 |

Coefficient of Variation for Adjusted Close | 80.83% |

The average ("mean") and median are measures of central tendency.

For the given time period, the price of WTT tends towards a value in the vicinity of 2.48 (the mean) and 1.92 (the median).

Standard Deviation and Coefficient Of Variation are measures of dispersion. These can be used to measure the volatility (risk) of a security, and also to estimate the expected ranges of the price.

Assuming a normal distribution, we expect to see 68% of values within one Standard Deviation of the mean (average), 95% of the values within two standard deviations of the mean, and 99% of the values within three standard deviations of the mean.

If the price of WTT goes above 4.49 (mean + 1 standard deviation) or below 0.48 (mean - 1 standard deviation), then the reader is urged to investigate further for a possible buying or selling opportunity.

If the price of WTT goes above 6.49 (mean + 2 standard deviations), then the reader is urged to investigate further as this would be an unusual event.

For the given time period, the price of WTT tends towards a value in the vicinity of 2.48 (the mean) and 1.92 (the median).

Standard Deviation and Coefficient Of Variation are measures of dispersion. These can be used to measure the volatility (risk) of a security, and also to estimate the expected ranges of the price.

Assuming a normal distribution, we expect to see 68% of values within one Standard Deviation of the mean (average), 95% of the values within two standard deviations of the mean, and 99% of the values within three standard deviations of the mean.

If the price of WTT goes above 4.49 (mean + 1 standard deviation) or below 0.48 (mean - 1 standard deviation), then the reader is urged to investigate further for a possible buying or selling opportunity.

If the price of WTT goes above 6.49 (mean + 2 standard deviations), then the reader is urged to investigate further as this would be an unusual event.

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