ETF Comparison: OSX4 vs JREA

比较选择

OSX4
JREA

ETF 说明

OSX4 - Ossiam Europe ESG Machine Learning UCITS ETF 1C (EUR)

The Ossiam Europe ESG Machine Learning UCITS ETF 1C (EUR) is an actively managed equity ETF that tracks companies from Eurozone countries selected according to environmental, social, and corporate governance (ESG) criteria. The fund uses machine learning techniques to select stocks and has an expense ratio of 0.65%. It is a small ETF with approximately €19 million in assets under management, domiciled in Luxembourg, and launched on February 3, 2012.

JREA - JPMorgan AC Asia Pacific ex Japan Research Enhanced Index Equity (ESG) UCITS ETF USD (acc)

The JPMorgan AC Asia Pacific ex Japan Research Enhanced Index Equity (ESG) UCITS ETF USD (acc) is an actively managed equity ETF that tracks the JP Morgan AC Asia Pacific ex Japan Research Enhanced Index Equity (ESG) index. The fund invests in companies from developed and emerging markets in the Asia Pacific region, excluding Japan, with a focus on environmental, social, and governance (ESG) considerations. The ETF aims to generate a higher return than the MSCI AC Asia Pacific ex Japan index while avoiding companies with negative ESG impacts.

比较表

OSX4JREA
基金名称Ossiam Europe ESG Machine Learning UCITS ETF 1C (EUR)JPMorgan AC Asia Pacific ex Japan Research Enhanced Index Equity (ESG) UCITS ETF USD (acc)
Fund ProviderOssiamJPMorgan Chase
IndexOssiam Europe ESG Machine LearningJP Morgan AC Asia Pacific ex Japan Research Enhanced Index Equity (ESG)
Asset ClassEquityEquity
ListingEU-listedEU-listed
Expense Ratio0.65%0.3%
Inception Date2012-02-032022-02-15
Number Of Holdings61364
CurrencyEURUSD
Distribution PolicyAccumulatingAccumulating
RegionEuropeAsia Pacific
Investment StyleActiveActive
LeveragedNon-leveragedNon-leveraged

回测选项

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摘要

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关键指标

绩效指标

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风险指标

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详细报酬

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绩效分析

绩效分析透过累积报酬、年底(EoY)报酬及 Sharpe 比率、Sortino 比率等风险调整指标,评估历史资料以衡量投资策略报酬。这有助于投资人在不同市场條件下评估绝对和相对绩效。

累积报酬

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年底报酬表

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年底报酬

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风险分析

风险分析是指对可能导致资本损失的潜在负面事件进行评估。进行风险分析有助于决定是否应进行投资。这是透过回撤、波动率和 Beta 等风险指标来完成的,这些指标反映了利益相关者对投资策略一致性的信心。

回撤

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回撤表

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Monte Carlo 模拟

Monte Carlo 模拟是一种统计方法,透过从历史资产价格资料中随机抽样产生大量潜在结果,用以预测投资组合报酬。它协助投资人评估各种市场條件下投资组合的潜在风险和报酬。模拟考虑初始投资,并可选择性地模拟现金流情境,如固定投入、固定提款或比例提款。

重要提示:透过 Monte Carlo 模拟产生的预测纯屬假设性質,不保证未来报酬。投资决策应考量多种因素,过去表现不代表未来结果。

Monte Carlo 指标

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模拟投资组合价格

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OSX4 vs JREA - ETF Comparison · PortfolioMetrics