Last Update:

Friday, April 10, 2026

Opening Value:

1026.51

Highest Value:

1029

Lowest Value:

995.5

Adj. Closing Value:

998.47

  • The forecast plot shows the forecasted Costco 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 Costco stock.

Point Forecast Lo 80 Hi 80 Lo 95 Hi 95
May 2026 1031.624 1000.880 1062.367 984.6058 1078.642
Jun 2026 1048.820 1007.593 1090.046 985.7689 1111.870
Jul 2026 1047.990 1001.408 1094.573 976.7482 1119.233
Aug 2026 1064.799 1008.088 1121.511 978.0665 1151.532
Sep 2026 1078.584 1013.357 1143.811 978.8277 1178.341
Oct 2026 1083.866 1012.446 1155.287 974.6377 1193.095
Nov 2026 1095.731 1016.942 1174.520 975.2339 1216.229
Dec 2026 1107.856 1021.942 1193.770 976.4621 1239.250
Jan 2027 1116.144 1024.045 1208.243 975.2911 1256.997
Feb 2027 1126.658 1028.104 1225.212 975.9322 1277.383
Mar 2027 1137.826 1032.833 1242.818 977.2538 1298.398
Apr 2027 1147.361 1036.309 1258.414 977.5209 1317.202
  • In March of 2027, the Costco stock price is forecasted to be 1138 dollars.

  • The width of the 80% prediction interval for this forecast in March of 2027 is 210 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 95.6% accurate.

  • This doesn’t guarantee that forecasts will be 95.6% 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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