Last Update:

Monday, April 21, 2025

Opening Value:

984.4

Highest Value:

1019

Lowest Value:

973.05

Adj. Closing Value:

987.91

  • The forecast plot shows the forecasted NETFLIX 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 NETFLIX stock.

Point Forecast Lo 80 Hi 80 Lo 95 Hi 95
May 2025 931.5097 887.9080 975.1115 864.8266 998.1929
Jun 2025 917.5952 854.4637 980.7266 821.0439 1014.1464
Jul 2025 909.0272 825.7946 992.2599 781.7339 1036.3206
Aug 2025 909.0272 805.4485 1012.6060 750.6172 1067.4372
Sep 2025 909.0272 788.4891 1029.5653 724.6801 1093.3744
Oct 2025 909.0272 773.6377 1044.4167 701.9668 1116.0876
Nov 2025 909.0272 760.2616 1057.7928 681.5099 1136.5446
Dec 2025 909.0272 747.9928 1070.0616 662.7463 1155.3081
Jan 2026 909.0272 736.5947 1081.4597 645.3145 1172.7400
Feb 2026 909.0272 725.9047 1092.1497 628.9655 1189.0889
Mar 2026 909.0272 715.8053 1102.2492 613.5197 1204.5347
Apr 2026 909.0272 706.2081 1111.8464 598.8421 1219.2124
  • In March of 2026, the NETFLIX stock price is forecasted to be 909 dollars.

  • The width of the 80% prediction interval for this forecast in March of 2026 is 386 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 89% accurate.

  • This doesn’t guarantee that forecasts will be 89% 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.

Software Citations

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