TY - GEN
T1 - Inter-commodity spread trading using neural network and genetic programming techniques
AU - Yen, Meng Feng
AU - Chou, Tsung Nan
AU - Ho, Ying Yue
PY - 2006
Y1 - 2006
N2 - We employ the methods of neural network (hereafter NN) and genetic programming (hereafter GP) in this paper to construct a spread trading system, respectively, to forecast the trend of the price spread between Taiwan Stock Exchange Electronic Index Futures (hereafter TE) and Taiwan Stock Exchange Finance Sector Index Futures (hereafter TF). To forecast the trend of the spread, we use a variety of technical indicators as the inputs to our two models. We tend to long one contract and short another if the next-day return of the former is predicted to be larger than the latter. If the spread trend is predicted to change its direction, we close off the position and open a new position completely contrary to the closed one. We compare the trading performances of this momentum strategy to the day trade strategy, i.e. closing off our positions before the market close ever day. We find that the momentum strategy tends to outperform the day trade strategy and that the Back-Propagation NN (hereafter BPNN) model is superior to the GP model under both strategies whilst both are profitable.
AB - We employ the methods of neural network (hereafter NN) and genetic programming (hereafter GP) in this paper to construct a spread trading system, respectively, to forecast the trend of the price spread between Taiwan Stock Exchange Electronic Index Futures (hereafter TE) and Taiwan Stock Exchange Finance Sector Index Futures (hereafter TF). To forecast the trend of the spread, we use a variety of technical indicators as the inputs to our two models. We tend to long one contract and short another if the next-day return of the former is predicted to be larger than the latter. If the spread trend is predicted to change its direction, we close off the position and open a new position completely contrary to the closed one. We compare the trading performances of this momentum strategy to the day trade strategy, i.e. closing off our positions before the market close ever day. We find that the momentum strategy tends to outperform the day trade strategy and that the Back-Propagation NN (hereafter BPNN) model is superior to the GP model under both strategies whilst both are profitable.
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U2 - 10.2991/jcis.2006.165
DO - 10.2991/jcis.2006.165
M3 - Conference contribution
AN - SCOPUS:33847691868
SN - 9078677015
SN - 9789078677017
T3 - Proceedings of the 9th Joint Conference on Information Sciences, JCIS 2006
BT - Proceedings of the 9th Joint Conference on Information Sciences, JCIS 2006
T2 - 9th Joint Conference on Information Sciences, JCIS 2006
Y2 - 8 October 2006 through 11 October 2006
ER -