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xiii | |
Part I Introduction to Prediction in the Financial Markets |
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Introduction to the Financial Markets |
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3 | (8) |
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3 | (2) |
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Economics and the Markets |
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5 | (1) |
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Financial Markets and Economic Data |
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6 | (1) |
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7 | (1) |
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8 | (3) |
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Univariate and Multivariate Time Series Predictions |
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11 | (12) |
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Philosophical Assumptions |
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11 | (5) |
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16 | (6) |
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22 | (1) |
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Evidence of Predictability in Financial Markets |
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23 | (12) |
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23 | (1) |
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Review of Theoretical Arguments |
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24 | (2) |
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Review of Empirical Research |
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26 | (3) |
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29 | (3) |
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Beyond Tests for Market Efficiency |
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32 | (1) |
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32 | (3) |
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Bond Pricing and the Yield Curve |
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35 | (6) |
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The Time Value of Money and Discount Factors |
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35 | (1) |
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36 | (1) |
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Bond Yield and the Yield Curve |
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37 | (1) |
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38 | (1) |
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39 | (2) |
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41 | (8) |
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41 | (1) |
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The General Economic Model |
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42 | (1) |
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42 | (1) |
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43 | (2) |
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45 | (4) |
Part II Theory of Prediction Modelling |
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General Form of Models of Financial Markets |
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49 | (6) |
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49 | (1) |
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49 | (2) |
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51 | (1) |
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52 | (1) |
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53 | (2) |
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Overfitting, Generalisation and Regularisation |
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55 | (6) |
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Overfitting and Generalisation |
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55 | (1) |
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56 | (1) |
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57 | (1) |
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57 | (1) |
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58 | (1) |
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58 | (1) |
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59 | (2) |
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The Bootstrap, Bagging and Ensembles |
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61 | (8) |
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61 | (1) |
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The Bias-Variance Trade-Off |
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61 | (1) |
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62 | (1) |
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63 | (2) |
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65 | (1) |
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66 | (1) |
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Ensembles in Financial Market Prediction |
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67 | (2) |
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69 | (8) |
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69 | (1) |
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Review of Linear Forecasting Methods |
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70 | (1) |
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Moving Average/Smoothing Methods |
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70 | (2) |
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ARMA, ARIMA and Time Series Regression Models |
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72 | (1) |
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Cointegration and Error Correction Models |
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73 | (1) |
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74 | (1) |
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75 | (1) |
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76 | (1) |
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77 | (10) |
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77 | (1) |
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77 | (4) |
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81 | (2) |
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83 | (4) |
Part III Theory of Specific Prediction Models |
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87 | (8) |
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What Are Neural Networks? |
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87 | (2) |
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89 | (1) |
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The Artificial or Formal Neuron |
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89 | (1) |
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Neural Network Architectures |
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90 | (2) |
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Neural Network Training Rules |
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92 | (1) |
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Further Comments on Neural Networks |
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93 | (2) |
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Learning Trading Strategies for Imperfect Markets |
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95 | (14) |
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95 | (1) |
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96 | (2) |
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Modelling Trading Strategies |
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98 | (3) |
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Experimental Design and Simulation Experiments |
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101 | (7) |
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108 | (1) |
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Dynamical Systems Perspective and Embedding |
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109 | (8) |
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109 | (3) |
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112 | (1) |
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Characterising and Measuring Complexity |
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113 | (1) |
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114 | (1) |
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115 | (2) |
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117 | (6) |
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117 | (1) |
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117 | (1) |
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Relevance Vector Machines |
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118 | (2) |
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Optimising the Hyperparameters for Regression |
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120 | (1) |
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Optimising the Hyperparameters for Classification |
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120 | (1) |
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121 | (2) |
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Bayesian Methods and Evidence |
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123 | (10) |
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123 | (1) |
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A Bayesian View of Probability |
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123 | (2) |
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125 | (2) |
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The Bayesian Evidence Ratio |
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127 | (3) |
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130 | (3) |
Part IV Prediction Model Applications |
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133 | (12) |
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133 | (1) |
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133 | (2) |
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Yield Curve Parameterisation |
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135 | (5) |
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Predicting the Yield Curve |
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140 | (2) |
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142 | (3) |
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Predicting Bonds Using the Linear Relevance Vector Machine |
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145 | (12) |
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145 | (1) |
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146 | (2) |
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148 | (6) |
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154 | (3) |
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Artificial Neural Networks |
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157 | (10) |
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157 | (1) |
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Artificial Neural Networks |
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157 | (6) |
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163 | (2) |
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165 | (2) |
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167 | (8) |
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167 | (1) |
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167 | (2) |
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Training the Adaptive Lag Network |
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169 | (1) |
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170 | (1) |
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171 | (3) |
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174 | (1) |
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175 | (6) |
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Making Predictions with Network Ensembles |
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175 | (2) |
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177 | (1) |
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The Random Vector Functional Link (RVFL) |
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178 | (1) |
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179 | (2) |
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181 | (12) |
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181 | (2) |
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Construction of Statistical Mispricings |
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183 | (1) |
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Conditional Statistical Arbitrage Strategies |
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184 | (1) |
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Application of Cointegration-Based Methodology to FTSE 100 Stocks |
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185 | (1) |
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Empirical Results of Conditional Statistical Arbitrage Models |
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185 | (6) |
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191 | (2) |
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Joint Optimisation in Statistical Arbitrage Trading |
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193 | (10) |
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193 | (1) |
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194 | (1) |
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Controlling the Properties of the Forecasting Model |
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195 | (1) |
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Modelling the Trading Strategy |
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196 | (1) |
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197 | (1) |
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197 | (4) |
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201 | (2) |
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203 | (8) |
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203 | (1) |
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203 | (2) |
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The Group Method of Data Handling (GMDH) |
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205 | (2) |
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The Support Vector Machine (SVM) Predictor Model |
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207 | (2) |
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The Relevance Vector Machine (RVM) |
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209 | (2) |
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211 | (10) |
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211 | (1) |
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212 | (1) |
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A Temperature-Dependent SOFTMAX Combiner |
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212 | (1) |
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213 | (3) |
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216 | (1) |
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217 | (4) |
Part V Optimising and Beyond |
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221 | (26) |
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221 | (1) |
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222 | (2) |
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Scope of Portfolio Optimisation Methods |
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224 | (1) |
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Efficient Set Mathematics and the Efficient Frontier |
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225 | (4) |
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Construction of Optimised Portfolios Using Quadratic Programming |
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229 | (1) |
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Issues in Practical Portfolio Construction |
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230 | (3) |
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What Portfolio Selection Requires |
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233 | (1) |
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The Process of Building an Optimised Portfolio |
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234 | (2) |
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Example of an Asset Allocation Portfolio |
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236 | (5) |
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Alternative Measures of Risk and Methods of Optimisation |
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241 | (4) |
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Questions about Portfolio Optimisation and Discussion |
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245 | (2) |
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247 | (6) |
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247 | (1) |
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248 | (1) |
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A General Multi-agent Approach to the Financial Markets |
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249 | (2) |
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251 | (2) |
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Financial Prediction Modelling: Summary and Future Avenues |
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253 | (6) |
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253 | (2) |
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Underlying Aspects of the Approach |
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255 | (2) |
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257 | (2) |
Further Reading |
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259 | (2) |
References |
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261 | (8) |
Index |
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269 | |