Economy
Equities Rebound, Gain N145bn Thursday
By Dipo Olowookere
Investors at the nation’s stock market had something to be happy about on Thursday as the Nigerian Stock Exchange (NSE) closed bullish, going up by 1.09 percent.
This was majorly influenced by renewed bargain hunting witnessed at the market yesterday, which reduced the year-to-date loss to 12.25 percent at the close of transactions.
Consequently, the All-Share Index (ASI) increased by 296.8 points to settle at 27,579.85 points, while the market capitalization went up by N144.5 billion to finish at N13.426 trillion.
However, unlike in the two previous, where the volume of transactions increased, at yesterday’s session, the volume and value of equities traded by investors reduced by 60.32 percent and 63.08 percent respectively.
A total of 183.5 million shares worth N2.9 billion were traded in 2,576 deals on Thursday in contrast to the 462.3 million shares valued at N7.9 billion transacted in 2,895 deals.
Access Bank emerged the most traded stock at the market, transacting 67.3 million units worth N509.8 million, while GTBank traded 23.2 million equities valued at N651.7 million.
Transcorp sold 14.1 million valued at N14.3 million, Lafarge Africa exchanged 10.4 million shares for N156.6 million, while FBN Holdings traded 8.7 million equities worth N47.9 million.
On the price movement chart, Nestle Nigeria recorded the highest price appreciation after going up by N121.50 to close at N1336.50 per unit, with Seplat following after rising by N46 to end at N506 per share.
Total Nigeria gained N10 to settle at N110 per unit, Access Bank improved by 50 kobo to close at N7.70 per unit, while Dangote Sugar appreciated by 20 kobo to finish at N10.90 per share.
On the other side, Forte Oil recorded the heaviest price loss after going down by N1.15 to close at N15.80 per share, while GTBank and Custodian Investment went down by 30 kobo each to settle at N27.95 and N6 respectively.
Dangote Flour reduced its share price by 10 kobo to finish at N22.20 per share, while Honeywell Flour depreciated by 6 kobo to close at 95 kobo per unit.
Economy
Dangote Refinery Raises Crude Oil Processing Capacity to 700,000bpd
By Adedapo Adesanya
Dangote Petroleum Refinery & Petrochemicals has increased its crude oil processing capacity to 700,000 barrels per day, exceeding its nameplate capacity of 650,000 barrels per day, reinforcing its position as the world’s largest single-train petroleum refinery.
The milestone was achieved during a performance test conducted by the refinery’s process licensors, highlighting the facility’s operational efficiency and ability to process additional feedstock while optimising output across its production units.
Vice President, Oil and Gas, Dangote Industries Limited, Mr Devakumar Edwin, said the increase forms part of a broader expansion strategy aimed at raising the refinery’s capacity to 1.4 million barrels per day within the next 30 months.
According to him, the planned expansion is expected to strengthen Nigeria’s energy security, eliminate dependence on imported refined petroleum products and position the country as a major regional export hub.
Mr Edwin noted that the refinery’s growth trajectory reflects ambitions that extend beyond meeting domestic demand, with a focus on establishing continental and global refining leadership.
The refinery, owned by billionaire Aliko Dangote, began fuel production in 2024 and has since scaled up output of petrol, diesel and jet fuel.
It supplies domestic markets and exports to African countries and Europe, including the United Kingdom, France and the Netherlands, while also shipping products to the United States and Saudi Arabia.
The refinery has also supplied petrol (called gasoline) to the United States and jet fuel to Saudi Arabia, further expanding its global footprint.
Dangote Refinery’s growing output has strengthened its role in stabilising fuel supply across Africa, particularly amid disruptions linked to geopolitical tensions in the Middle East. Industry observers say the facility has increasingly become a key source of energy security for several African nations.
Recall that Dangote Petroleum Refinery emerged as the world’s largest exporter of jet fuel in April, according to S&P Global Commodities.
The refinery has also contributed to reducing Nigeria’s dependence on imported fuel, easing pressure on foreign exchange reserves and supporting broader efforts to maximise value from the country’s crude oil resources.
Growing production levels have attracted interest from global crude suppliers and commodity trading firms, with the refinery sourcing feedstock from both domestic and international producers to sustain rising output.
Looking ahead, Dangote has outlined plans to transform the facility into the world’s largest refinery by 2028, with a targeted processing capacity of 1.4 million barrels per day.
The expansion is expected to generate significant economic benefits through increased industrial activity, job creation, export earnings and improved trade balances.
Beyond fuels, the refinery is also expected to strengthen downstream manufacturing through the supply of liquefied petroleum gas (LPG), polypropylene and other industrial feedstocks used in the production of packaging materials, consumer goods and detergents. Future plans also include the production of Linear Alkylbenzene (LAB), a key raw material in detergent manufacturing.
Economy
Monte Carlo Simulation for Trading Strategy Risk Assessment
Most traders evaluate a strategy by looking at its historical performance.
Common metrics such as total return, win rate, profit factor, maximum drawdown, and Sharpe ratio provide valuable information about how a strategy performed in the past.
The problem is that historical performance tells only one story.
Financial markets are inherently uncertain. Even a strategy with an impressive backtest can experience very different outcomes once it encounters changing market conditions, unexpected volatility, or an unfavorable sequence of trades.
This is why professional traders, quantitative researchers, and portfolio managers increasingly rely on Monte Carlo simulation as part of their risk assessment process.
Rather than focusing on a single historical outcome, Monte Carlo analysis explores thousands of possible scenarios, helping traders understand what could happen—not just what already happened.
Why Historical Performance Is Only Part Of The Picture
Backtesting remains one of the most important tools in strategy development.
Platforms such as MetaTrader 5 provide sophisticated testing environments that allow traders to evaluate Expert Advisors and trading systems using historical market data.
A typical backtest may show:
| Metric | Result |
|---|---|
| Net Profit | 35% |
| Win Rate | 54% |
| Maximum Drawdown | 12% |
At first glance, these numbers appear encouraging.
However, every backtest contains one important limitation:
History occurred only once.
The strategy followed a specific sequence of winning and losing trades. If those same trades had occurred in a different order, the overall experience could have looked very different.
This is where Monte Carlo analysis becomes valuable.
Understanding Sequence Risk
One of the most important concepts in Monte Carlo simulation is sequence risk.
Consider a simple series of trades:
| Trade | Result |
|---|---|
| 1 | +3% |
| 2 | +2% |
| 3 | -1% |
| 4 | +4% |
| 5 | -2% |
The overall result is positive.
However, if those same trades occurred in a different order:
| Trade | Result |
|---|---|
| 1 | -2% |
| 2 | -1% |
| 3 | +2% |
| 4 | +3% |
| 5 | +4% |
the final return may remain similar while the path becomes significantly more difficult.
The trader may experience:
- Larger drawdowns
- Longer recovery periods
- Increased psychological pressure
- Greater capital requirements
The strategy itself has not changed.
Only the sequence has changed.
Monte Carlo simulation explores thousands of these alternative scenarios to estimate how different trade sequences may influence future performance.
Exploring Thousands Of Possible Outcomes
Monte Carlo analysis works by generating large numbers of alternative outcomes based on historical strategy behavior.
A simplified process looks like this:
Historical Trade Results
↓
Randomization
↓
Simulation
↓
Repeat Thousands of Times
↓
Risk Analysis
Each simulation represents a plausible alternative version of history.
By repeating this process thousands of times, traders can estimate:
- Potential drawdowns
- Losing streak probabilities
- Capital requirements
- Performance variability
- Confidence intervals
The objective is not to predict the future.
The objective is to understand uncertainty.
Looking Beyond Average Returns
Many traders focus heavily on expected returns.
Risk professionals often focus on worst-case outcomes.
Consider two strategies:
| Metric | Strategy A | Strategy B |
|---|---|---|
| Average Return | 20% | 20% |
| Historical Drawdown | 10% | 10% |
At first glance, they appear nearly identical.
Monte Carlo analysis may reveal a different story:
| Risk Metric | Strategy A | Strategy B |
|---|---|---|
| Worst Simulated Drawdown | 18% | 35% |
| Probability of 20% Drawdown | 5% | 27% |
Although historical results appear similar, future risk characteristics may differ significantly.
This is one reason why institutional investors rarely rely solely on traditional backtest statistics.
The Reality Of Losing Streaks
One of the most underestimated aspects of trading is the impact of consecutive losses.
Even profitable strategies can experience difficult periods.
For example:
| Consecutive Trades |
|---|
| Loss |
| Loss |
| Loss |
| Loss |
| Loss |
| Loss |
Such sequences are completely normal.
However, they often create emotional pressure and lead traders to abandon otherwise profitable systems.
Monte Carlo analysis helps estimate:
- Expected losing streak lengths
- Worst-case losing streaks
- Probability of extended downturns
- Recovery requirements
Understanding these possibilities allows traders to set more realistic expectations before real capital is exposed.
Position Sizing And Capital Preservation
Position sizing is one of the most important applications of Monte Carlo analysis.
Even profitable strategies can fail if risk per trade is too aggressive.
Monte Carlo simulations help answer questions such as:
- How much capital is required?
- What position size is sustainable?
- What drawdown level is acceptable?
- What is the probability of account depletion?
For example, a strategy may appear relatively safe at 1% risk per trade.
The same strategy may exhibit a significant probability of severe drawdowns when risk increases to 5% per trade.
Understanding these relationships often leads to better risk-management decisions.
Portfolio Risk And Diversification
Monte Carlo simulation is not limited to individual strategies.
Portfolio managers frequently use it to evaluate:
- Multi-strategy portfolios
- Multi-asset portfolios
- Diversification effects
- Correlation risks
A portfolio may appear well diversified based on historical data.
However, asset relationships can change unexpectedly during periods of market stress.
Monte Carlo analysis helps traders evaluate how portfolios may behave under alternative scenarios rather than relying solely on historical observations.
Randomness Plays A Bigger Role Than Most Traders Realize
One of the most important lessons of Monte Carlo analysis is that randomness influences results more than many traders expect.
A profitable strategy can experience:
- Unfavorable timing
- Extended drawdowns
- Long losing streaks
- Temporary underperformance
without any deterioration in the underlying strategy.
Understanding this distinction helps traders separate:
| Normal Statistical Variation | Genuine Strategy Problems |
|---|---|
| Temporary drawdowns | Structural performance decline |
| Random losing streaks | Broken trading logic |
| Short-term underperformance | Changing market assumptions |
This perspective is essential for long-term strategy management.
Monte Carlo As Part Of A Complete Validation Process
Monte Carlo analysis works best when combined with other research methods.
Many professional workflows follow a process similar to:
| Step | Process |
|---|---|
| 1 | Strategy Development |
| 2 | Historical Backtesting |
| 3 | Optimization |
| 4 | Monte Carlo Analysis |
| 5 | Forward Testing |
| 6 | Deployment |
| 7 | Ongoing Monitoring |
The broader MetaTrader ecosystem supports many stages of this workflow through strategy testing, optimization, algorithmic development, and performance analysis tools.
The objective is not simply to find profitable strategies.
The objective is to understand how those strategies may behave when market conditions become less favorable.
Why Professional Firms Use Monte Carlo Analysis
Institutional investment firms focus on risk as much as return.
Their goal is not only to identify profitable opportunities but also to understand:
- Capital requirements
- Worst-case scenarios
- Portfolio resilience
- Survival probabilities
These considerations become increasingly important as capital allocations grow larger.
The same principles can benefit independent traders.
A strategy with slightly lower returns but substantially lower risk may ultimately prove more sustainable over the long term.
Understanding Risk Beyond The Backtest
Historical performance provides valuable information, but it tells only part of the story.
Monte Carlo simulation helps traders explore the uncertainty that exists beyond a single backtest result. By generating thousands of alternative scenarios, the technique provides insight into drawdowns, losing streaks, capital requirements, and portfolio resilience.
As algorithmic trading becomes increasingly sophisticated, risk assessment is becoming just as important as strategy development itself.
The most successful traders are often not those who find the highest returns.
They are those who understand the risks behind those returns and prepare for outcomes that may never appear in a traditional backtest.
In modern quantitative trading, understanding uncertainty can be just as valuable as identifying opportunity.
Economy
Capital Inflows to Nigeria Rise 83.8% to $10.37bn in Q1 2026
By Adedapo Adesanya
Nigeria attracted $10.37 billion in capital importation in the first quarter of 2026, representing an 83.8 per cent increase from the $5.64 billion recorded in the corresponding period of 2025, according to the National Bureau of Statistics (NBS).
The latest Capital Importation Report released by the stats bureau also showed that capital inflows rose by 60.97 per cent from $6.44 billion recorded in the fourth quarter of 2025.
The report stated, “In Q1 2026, total capital importation into Nigeria stood at $10.37bn, higher than $5.64bn recorded in Q1 2025, indicating an increase of 83.83 per cent. In comparison to the preceding quarter, capital importation increased by 60.97 per cent from $6.44bn in Q4 2025.”
Analysis of the inflows showed that portfolio investment remained the dominant source of foreign capital, accounting for $9.86 billion or 95.09 per cent of the total amount imported into the economy.
The stats office disclosed that foreign direct investment stood at $135.08 million, representing only 1.30 per cent of total capital inflows, while other investments accounted for $374.48 million or 3.61 per cent.
“Portfolio Investment ranked top with $9.86bn, accounting for 95.09 per cent, followed by Other Investment with $374.48m, accounting for 3.61 per cent. Foreign Direct Investment recorded the least with $135.08m, representing 1.30 per cent of total capital importation in Q1 2026,” the report added.
A further breakdown showed that money market instruments attracted the largest share of portfolio investments at $6.50 billion, while investments in bonds amounted to $3.23 billion.
Equity investments under the portfolio category stood at $131.81 million.
The banking sector emerged as the biggest destination for foreign capital during the quarter, attracting $7.55 billion, representing 72.79 per cent of total inflows.
The financing sector followed with $2.43 billion or 23.42 per cent, while the production and manufacturing sector attracted $152.27 million, accounting for 1.47 per cent of total capital imported.
Other sectors that received foreign investments included shares, trading, agriculture, information technology services, telecommunications, oil and gas, transport, construction, healthcare, education, and consultancy services.
The United Kingdom remained Nigeria’s largest source of foreign capital, accounting for $5.08 billion or 49.01 per cent of total inflows. The United States followed with $3.18 billion, representing 30.69 per cent, while South Africa accounted for $983.83 million or 9.49 per cent.
Among financial institutions, Standard Chartered Bank Nigeria Limited received the highest capital inflow during the quarter at $4.41 billion, representing 42.56 per cent of the total.
Stanbic IBTC Bank Plc followed with $2.78 billion or 26.79 per cent, while Rand Merchant Bank handled $930.82 million, accounting for 8.97 per cent.
Other banks that facilitated capital inflows into the country during the period included Citibank Nigeria, Access Bank, First Bank of Nigeria, Guaranty Trust Bank, Zenith Bank, FCMB, Ecobank, Fidelity Bank, and United Bank for Africa.
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