如何发现港股市场的大买家并跟进赚钱

Li-Xin Wang
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引用次数: 0

摘要

我们将包含大买家和大卖家的价格动态模型应用于在香港联交所上市的前20只银行和房地产股票的每日收盘价。其基本思想是估计模型中大买家和大卖家的实力参数,并根据这些参数估计做出买入/卖出决策。我们提出了两种交易策略:(1)跟随大买家,即在大买家开始出现且没有大卖家迹象时买入,在大买家还在时持有股票,在大买家消失时卖出;(ii)坐以待毙,即当大买家的实力开始超过大卖家的实力时买入,反之则卖出。在2007年7月3日至2014年7月2日这7年间,对245个两年间隔进行了测试,其中包括各种情况,如果投资者在此期间从基准的买入并持有策略转变为跟随大买家或随大流的策略,净利润将分别平均增加67%或120%。
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How to detect big buyers in Hong Kong stock market and follow them up to make money
We apply the price dynamical model with big buyers and big sellers to the daily closing prices of the top 20 banking and real estate stocks listed in the Hong Kong Stock Exchange. The basic idea is to estimate the strength parameters of the big buyers and the big sellers in the model and make buy/sell decisions based on these parameter estimates. We propose two trading strategies: (i) Follow-the-Big-Buyer which buys when big buyer begins to appear and there is no sign of big sellers, holds the stock as long as the big buyer is still there, and sells the stock once the big buyer disappears; and (ii) Ride-the-Mood which buys as soon as the big buyer strength begins to surpass the big seller strength, and sells the stock once the opposite happens. Based on the testing over 245 two-year intervals uniformly distributed across the seven years from 03-July-2007 to 02-July-2014 which includes a variety of scenarios, the net profits would increase 67% or 120% on average if an investor switched from the benchmark Buy-and-Hold strategy to the Follow-the-Big-Buyer or Ride-the-Mood strategies during this period, respectively.
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