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251105_US BIGtech ETF comparison
Performance
Return for Risk
Dividends
Drawdowns
Volatility
Diversification

Asset Allocation


S&P 500 Index

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Performance

Performance Chart

The chart shows the growth of an initial investment of $10,000 in 251105_US BIGtech ETF comparison, comparing it to the performance of the S&P 500 index or another benchmark. All prices have been adjusted for splits and dividends. The portfolio is rebalanced Every 3 months.


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Returns By Period


Position1D1MYTD6M1Y3Y*5Y*10Y*
Benchmark
S&P 500 Index
1.65%1.97%10.35%10.82%26.39%19.66%12.33%13.81%
Portfolio
251105_US BIGtech ETF comparison
3.09%3.02%17.79%18.89%41.72%29.51%
MAGS
Roundhill Magnificent Seven ETF
2.63%-4.61%1.00%2.07%27.18%31.84%
QQQ
Invesco QQQ ETF
3.14%4.95%21.26%22.17%41.87%27.20%17.59%22.31%
QQQM
Invesco NASDAQ 100 ETF
3.11%4.92%21.25%22.16%41.92%27.28%17.66%
VGT
Vanguard Information Technology ETF
3.42%6.55%28.27%29.82%55.62%30.76%21.17%25.72%
*Multi-year figures are annualized to reflect compound growth (CAGR)

Monthly Returns

Based on dividend-adjusted daily data since Apr 11, 2023, 251105_US BIGtech ETF comparison's average daily return is +0.13%, while the average monthly return is +2.56%. At this rate, an investment would double in approximately 2.3 years.

Historically, 67% of months were positive and 33% were negative. The best month was Apr 2026 with a return of +16.0%, while the worst month was Mar 2025 at -8.7%. The longest winning streak lasted 7 consecutive months, and the longest losing streak was 3 months.

On a daily basis, 251105_US BIGtech ETF comparison closed higher 57% of trading days. The best single day was Apr 9, 2025 with a return of +13.0%, while the worst single day was Apr 3, 2025 at -6.2%.


JanFebMarAprMayJunJulAugSepOctNovDecTotal
20260.49%-3.69%-4.76%16.00%11.35%-1.07%17.79%
20251.44%-4.08%-8.70%1.11%10.61%7.06%3.64%1.23%6.64%5.15%-2.53%-0.19%21.74%
20241.92%6.86%1.64%-4.18%7.20%7.46%-1.31%0.66%3.58%-0.73%6.66%1.79%35.51%
20232.40%8.60%6.04%3.80%-1.62%-5.32%-2.24%11.62%5.12%30.79%

Benchmark Metrics

251105_US BIGtech ETF comparison has an annualized alpha of 3.81%, beta of 1.38, and R2 of 0.89 versus S&P 500 Index. Calculated based on daily prices since April 11, 2023.

  • This portfolio captured 151.53% of S&P 500 Index gains and 108.80% of its losses - amplifying both gains and losses, but participating more in upside than downside.
  • This portfolio generated an annualized alpha of 3.81% versus S&P 500 Index - delivering returns beyond what market exposure alone would predict.

Alpha
3.81%
Beta
1.38
0.89
Upside Capture
151.53%
Downside Capture
108.80%

Expense Ratio

251105_US BIGtech ETF comparison has an expense ratio of 0.18%, which is considered low. Below, you can find the expense ratios of the portfolio's funds side by side and easily compare their relative costs.


Return for Risk

Risk / Return Rank

251105_US BIGtech ETF comparison ranks 38 for risk / return — below 38% of Portfolios on our site. The returns aren't fully compensating for the risk involved. This isn't necessarily a dealbreaker, but factor it into your decision — especially if you're risk-averse.


251105_US BIGtech ETF comparison Risk / Return Rank: 3838
Overall Rank
251105_US BIGtech ETF comparison Sharpe Ratio Rank: 4545
Sharpe Ratio Rank
251105_US BIGtech ETF comparison Sortino Ratio Rank: 3737
Sortino Ratio Rank
251105_US BIGtech ETF comparison Omega Ratio Rank: 4040
Omega Ratio Rank
251105_US BIGtech ETF comparison Calmar Ratio Rank: 3535
Calmar Ratio Rank
251105_US BIGtech ETF comparison Martin Ratio Rank: 3232
Martin Ratio Rank
The rank (0–100) shows how this investment's returns compare to the risk taken. Higher = better. Based on the past 12 months of data, combining Sharpe, Sortino, and other metrics used by quantitative funds and institutional investors.

Return / Risk — by metrics

The table below presents risk-adjusted performance metrics for 251105_US BIGtech ETF comparison and compares them with S&P 500 Index.

Values are calculated on a 1-year rolling basis and updated daily. Risk-adjusted metrics are more stable over longer periods — use the period switch above to explore them.


PortfolioBenchmarkDifference
Sharpe ratioReturn per unit of total volatility

2.25

2.14

+0.11

Sortino ratioReturn per unit of downside risk

2.86

2.89

-0.02

Omega ratioGain probability vs. loss probability

1.39

1.39

0.00

Calmar ratioReturn relative to maximum drawdown

2.84

2.91

-0.07

Martin ratioReturn relative to average drawdown

9.91

13.08

-3.18


How much return does each position deliver for the risk it carries? Higher values mean better reward for the risk taken.

PositionRisk / Return RankSharpe ratioSortino ratioOmega ratioCalmar ratioMartin ratio
MAGS
Roundhill Magnificent Seven ETF
38
1.341.861.231.474.94
QQQ
Invesco QQQ ETF
79
2.423.121.423.5213.12
QQQM
Invesco NASDAQ 100 ETF
80
2.433.131.433.5213.11
VGT
Vanguard Information Technology ETF
77
2.523.091.413.4110.55

Sharpe Ratio

The Sharpe ratio helps investors understand how much return they're getting for the level of risk taken. A higher Sharpe ratio indicates better risk-adjusted performance, meaning more reward for each unit of risk. Learn how to interpret the Sharpe ratio.

The current 251105_US BIGtech ETF comparison Sharpe ratio is 2.25 as of Jun 13, 2026 (the value is recalculated daily), calculated over the past 12 months.

Compared to the broad market, where average Sharpe ratios range from 1.56 to 2.44, this portfolio's current Sharpe ratio falls between the 25th and 75th percentiles. This indicates that its risk-adjusted performance is in line with the majority of portfolios, suggesting a balanced approach to risk and return—likely suitable for a wide range of investors.

The chart below shows the rolling Sharpe ratio of 251105_US BIGtech ETF comparison compared to the selected benchmark. This view highlights how the investment's risk-adjusted performance has changed over time.


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Dividends

Dividend yield

251105_US BIGtech ETF comparison provided a 0.64% dividend yield over the last twelve months.


PositionTTM20252024202320222021202020192018201720162015
Portfolio0.64%0.71%0.64%0.59%0.64%0.37%0.38%0.46%0.55%0.46%0.59%0.57%
MAGS
Roundhill Magnificent Seven ETF
1.47%1.48%0.81%0.44%0.00%0.00%0.00%0.00%0.00%0.00%0.00%0.00%
QQQ
Invesco QQQ ETF
0.38%0.45%0.56%0.62%0.80%0.43%0.55%0.74%0.91%0.84%1.06%0.99%
QQQM
Invesco NASDAQ 100 ETF
0.41%0.50%0.61%0.65%0.83%0.40%0.16%0.00%0.00%0.00%0.00%0.00%
VGT
Vanguard Information Technology ETF
0.32%0.40%0.60%0.65%0.91%0.64%0.82%1.11%1.29%0.99%1.31%1.28%

Drawdowns

Drawdowns Chart

The Drawdowns chart displays portfolio losses from any high point along the way. Drawdowns are calculated considering price movements and all distributions paid, if any.


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Worst Drawdowns

The table below displays the maximum drawdowns of the 251105_US BIGtech ETF comparison. A maximum drawdown is a measure of risk, indicating the largest reduction in portfolio value due to a series of losing trades.

The maximum drawdown for the 251105_US BIGtech ETF comparison was 25.42%, occurring on Apr 8, 2025. Recovery took 54 trading sessions.

The current 251105_US BIGtech ETF comparison drawdown is 5.05%.


Related event

Drawdown

Fall

Recovery

Underwater

2025 selloff2025
-25.42%Apr 2025
3mo 22d2mo 19d
6mo 11dDec 2024 - Jun 2025
2024 correction2024
-15.14%Aug 2024
27d3mo 1d
3mo 28dJul 2024 - Nov 2024
2026 correction2026
-14.74%Mar 2026
5mo 1d18d
5mo 19dOct 2025 - Apr 2026
2023 correction2023
-11.33%Oct 2023
3mo 8d19d
3mo 27dJul 2023 - Nov 2023
2026 pullback2026
-8.05%Jun 2026
7d
13d 7hJun 2026 - now

Volatility

Volatility Chart

The chart below shows the rolling one-month volatility.


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Diversification

Diversification Metrics


Number of Effective Assets

The portfolio contains 4 assets, with an effective number of assets of 4.00, reflecting the diversification based on asset allocation. Your capital is spread almost evenly across your holdings, indicating a well-balanced allocation. Note that true diversification also depends on the correlations between assets — check the diversification ratio below.


Diversification Ratio
1Y
3Y
All Time
Diversification Ratio

1.04

1.02

1.02

The portfolio has a diversification ratio of 1.02, placing it in the bottom quartile across portfolios — positions are highly correlated. Consider adding assets from different classes or sectors to reduce risk.

251105_US BIGtech ETF comparison correlation to the S&P 500 Index

251105_US BIGtech ETF comparison has a 0.93 correlation to S&P 500 Index over the trailing 12 months. This section compares each holding's correlation to the benchmark and to the portfolio.

Correlation
Correlation (1Y)
Calculated over the trailing 1-year period

0.93

Correlation (3Y)
Calculated over the trailing 3-year period

0.92

Correlation (All Time)
Calculated using the full available price history since Apr 11, 2023

0.91


Benchmark Correlations

Correlation vs. S&P 500 Index. QQQM has the highest benchmark correlation at 0.93, while MAGS has the lowest at 0.81.

MAGS
0.81
VGT
0.89
QQQ
0.93
QQQM
0.93

Portfolio Correlations

Correlation vs. 251105_US BIGtech ETF comparison. QQQ has the highest portfolio correlation at 0.99, while MAGS has the lowest at 0.93.

MAGS
0.93
VGT
0.96
QQQM
0.99
QQQ
0.99

Asset Correlations Table

The table below displays the correlation coefficients between the individual components of the portfolio, the entire portfolio, and the chosen benchmark.

MAGSVGTQQQMQQQ
MAGS1.000.820.890.89
VGT0.821.000.960.96
QQQM0.890.961.001.00
QQQ0.890.961.001.00
The correlation results are calculated based on daily price changes starting from Apr 11, 2023
Diversification Analysis

Find what 251105_US BIGtech ETF comparison is missing

See which holdings overlap, where 251105_US BIGtech ETF comparison is concentrated, and which low-correlation assets could fill the gaps.

Analyze Diversification