Last Update:

Monday, April 21, 2025

Opening Value:

41.78

Highest Value:

42.78

Lowest Value:

40.75

Adj. Closing Value:

42.71

  • The forecast plot shows the forecasted Aritzia Inc stock prices for the next 12 months.

  • The plot also shows the 80% prediction interval in dark purple and the 95% prediction interval in light purple.

  • The numeric values for these forecasted values and prediction intervals are shown in the next tab.

The table below shows the forecast values and 80% and 95% prediction intervals for the 12 requested forecasts for the Aritzia Inc stock.

Point Forecast Lo 80 Hi 80 Lo 95 Hi 95
Aug 2024 50.22 44.78089 55.65911 41.90160 58.53840
Sep 2024 50.22 42.52794 57.91206 38.45601 61.98399
Oct 2024 50.22 40.79919 59.64081 35.81211 64.62789
Nov 2024 50.22 39.34178 61.09822 33.58320 66.85680
Dec 2024 50.22 38.05778 62.38222 31.61950 68.82051
Jan 2025 50.22 36.89696 63.54304 29.84417 70.59583
Feb 2025 50.22 35.82947 64.61053 28.21159 72.22842
Mar 2025 50.22 34.83588 65.60412 26.69202 73.74799
Apr 2025 50.22 33.90267 66.53733 25.26480 75.17520
May 2025 50.22 33.02003 67.41997 23.91491 76.52509
Jun 2025 50.22 32.18052 68.25948 22.63099 77.80901
Jul 2025 50.22 31.37838 69.06163 21.40422 79.03578
  • In March of 2026, the Aritzia Inc stock price is forecasted to be 50 dollars.

  • The width of the 80% prediction interval for this forecast in March of 2026 is 36 dollars.
  • These three residual plots allow the analyst to examine the distribution of the residuals of the modeled time series.

  • Despite increasing volatility, our stock price model is estimated to be 90.2% accurate.

  • This doesn’t guarantee that forecasts will be 90.2% accurate but it does improve our chances of accurate forecasting.


This dashboard was created using Quarto in RStudio, and the R Language and Environment.

The dataset used to create this dashboard was downloaded from Yahoo Finance.

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