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The datasets from which these PYPL forecasts are drawn originate from FactSet. They represent the aggregated estimates made available to academics or practitioners via the Institutional Brokers’ Estimate System (IBES). Although this seems like a fair way of predicting future profits given that they have some level expertise in investment banking, studies show there's still an optimism bias present among these professionals.

Regression-based models suffer from the use of past earnings in a linear or exponential framework. This can lead to bias because these models assume that future performance will mirror historical trends exactly, whereas business cycle dynamics and seasonality may introduce randomness over time periods.

While there is a clear consensus that a factor-based approach to investment is rewarded over time, it goes without saying that the implementation of factor investing strategies, especially in the world of long-only money-management, is rarely subject to the same consensus. Index providers who offer funds that generally contain a small number of stocks in relation to the size and risk level they are designed for, often do so by selecting certain conditions or factors within each company.

For example, some commercial indexes aim at proportionality between price movements and dividends paid out over time while others look exclusively on liquidity considerations alone; yet still more restrict their selection criteria based around corporate governance issues like transparency reports rating various aspects such as soundness levels among others relevant metrics available about any given firm when deciding whether it should be included into an investor’s portfolio.

Apple Inc Seasonality AAPL

Components
Historical price and seasonality data
PYPL forecast 2025 logoPYPL forecast 2025 logo

Seasonality

This multi-factor forecast for Paypal Holdings (PYPL) is based on a weighted average of five factor-dervied forecasts.
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AAPL Seasonal Chart
AAPL Seasonal Returns
AAPL Seasonal Probabilities

Forecast Model

Score

2025 Forecast

Multi-Factor

5.7

241.67

Volatility

6.1

249.67

Momentum

4.8

205.95

Value

6.5

277.3

Quality

5.8

246.44

Size

5.4

228.92

AAPL Seasonal Returns Previous 40 Years

2022

2023

2024

2025

241.73

242.98

245.32

246.45

Month

Median

Mean

α

Win Freq

January

+3.13%

+5.84%

-5.21%

247.71

February

+3.13%

+5.84%

-5.21%

47.93%

March

+2.64%

+5.21%

-5.21%

77.73%

April

+2.64%

+5.21%

-5.21%

77.73%

May

+2.64%

+5.21%

-5.21%

77.73%

June

+2.64%

+5.21%

-5.21%

77.73%

July

+2.64%

+5.21%

-5.21%

77.73%

August

+2.64%

+5.21%

-5.21%

77.73%

September

+2.64%

+5.21%

-5.21%

57.73%

October

+2.64%

+5.21%

-5.21%

67.73%

November

-2.64%

+5.21%

-5.21%

47.73%

December

+2.64%

-5.21%

-5.21%

47.73%

About Apple Inc
Apple, Inc. engages in the design, manufacture, and sale of smartphones, personal computers, tablets, wearables and accessories, and other variety of related services. It operates through the following geographical segments: Americas, Europe, Greater China, Japan, and Rest of Asia Pacific. The Americas segment includes North and South America. The Europe segment consists of European countries, as well as India, the Middle East, and Africa. The Greater China segment comprises of China, Hong Kong, and Taiwan. The Rest of Asia Pacific segment includes Australia and Asian countries. Its products and services include iPhone, Mac, iPad, AirPods, Apple TV, Apple Watch, Beats products, Apple Care, iCloud, digital content stores, streaming, and licensing services.

2022

2023

2024

2025

241.73

242.98

245.32

246.45

Best month to buy APPL

Apple Inc has tended to perform the worst during the month of October, during which the stock has historically returned an average of 5.35%.

Worst month to buy APPL

Apple Inc has tended to perform the worst during the month of June, during which the stock has historically returned an average of -11.23%.

Best three-month period to buy APPL

Historically, the timeframe spanning between November 6 and ending February 5 has represented the most favorable three-month holding period for the stock of Apple Inc. The average return during this period as totaled 8.67% over the last 40 years.

Worst three month-period to by APPL

Historically, the timeframe spanning between May 3 and ending August 2 has represented the most favorable three-month holding period for the stock of Apple Inc. The average return during this period as totaled -8.33% over the last 40 years.
About Market Seasonality
Seasonality can be defined as the predictable changes that occur over a one-year period in an economy, market or business, based on the seasons of the calendar year.

Traders often attempt to take advantage of seasonal patterns by holding long and short positions in assets simultaneously in the same or a related markets, such as equity sectors, index futures or commodities.

Investors in individual equities may take seasonality into account when when analyzing the impact that seasonal changes may have on the fortunes of particular companies. For example, for many businesses, sales can vary depending on the season. In such cases, the share prices of business that experience higher profits during specific seasons may simultaneously register significant gains while later giving them back during off-peak periods.Seasonality can be defined as the predictable changes that occur over a one-year period in an economy, market or business, based on the seasons of the calendar year.

Seasonality

This chart shows the seasonal tendencies  of the share price of Apple Inc AAPL over the last 40 years.
Components
Historical price and seasonality data
PYPL forecast 2025 logoPYPL forecast 2025 logo
PYPL forecast 2025 logo
AAPL
Guest Commentary
Robson Chow is a hedge fund manager
Trending
The datasets from which these PYPL forecasts are drawn originate from FactSet. They represent the aggregated estimates made available to academics or practitioners via the Institutional Brokers’ Estimate System (IBES). Although this seems like a fair way of predicting future profits given that they have some level expertise in investment banking, studies show there's still an optimism bias present among these professionals.

Regression-based models suffer from the use of past earnings in a linear or exponential framework. This can lead to bias because these models assume that future performance will mirror historical trends exactly, whereas business cycle dynamics and seasonality may introduce randomness over time periods.

While there is a clear consensus that a factor-based approach to investment is rewarded over time, it goes without saying that the implementation of factor investing strategies, especially in the world of long-only money-management, is rarely subject to the same consensus. Index providers who offer funds that generally contain a small number of stocks in relation to the size and risk level they are designed for, often do so by selecting certain conditions or factors within each company.

For example, some commercial indexes aim at proportionality between price movements and dividends paid out over time while others look exclusively on liquidity considerations alone; yet still more restrict their selection criteria based around corporate governance issues like transparency reports rating various aspects such as soundness levels among others relevant metrics available about any given firm when deciding whether it should be included into an investor’s portfolio.