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作者简介:
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陈梓宏(1993),男,工程师,
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从事电力市场、电力经济研究,E-mail:
IEEE Access, 2022, 10: 75257–75268.
chenzihong@geg.com.cn;
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黄宁馨(1997),女,硕士研究
removing noise entropy within mutual information for limited-sample
生,从事电力经济、电力供需研究,
industrial data[J]. IEEE Transactions on Industrial Informatics, 2025,
E-mail:huangningxin@geg.com.cn;
21(5): 3913–3923.
陈硕楠(1999),男,通信作
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者,硕士研究生,从事人工智能、机器学习算法应用研
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