Preface |
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xi | |
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1 | (150) |
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1 | (1) |
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2 | (20) |
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11 | (11) |
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22 | (5) |
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27 | (22) |
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Stochastic Integrals with Respect to a Wiener Process |
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27 | (12) |
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Stochastic Integration with Respect to a Square Integrable Martingale |
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39 | (3) |
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Quadratic Characteristic and Quadratic Variation Processes |
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42 | (5) |
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47 | (2) |
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49 | (22) |
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Stochastic Integral with Respect to a Local Martingale |
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53 | (3) |
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Some Inequalities for Local Martingales |
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56 | (4) |
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Strong Law of Large Numbers |
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60 | (3) |
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A Martingale Conditional Law |
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63 | (2) |
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Limit Theorems for Continuous Local Martingales |
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65 | (3) |
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Some Additional Results on Stochastic Integrals with Respect to Square Integrable Local Martingales |
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68 | (3) |
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71 | (26) |
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Stochastic Integral with Respect to a Semimartingale |
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73 | (1) |
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Product Formulae for Semimartingales |
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74 | (1) |
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Generalized Ito-Ventzell Formula |
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75 | (2) |
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Convergence of Quadratic Variation of Semimartingales |
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77 | (1) |
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Yoerup's Theorem for Local Martingales |
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78 | (8) |
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Stochastic Differential Equations |
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86 | (1) |
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87 | (3) |
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Stochastic Integral with Respect to the Measure μ - ν |
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90 | (2) |
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Decomposition of Local Martingales Using Stochastic Integrals |
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92 | (5) |
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97 | (8) |
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Girsanov's Theorem for Semimartingales |
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101 | (1) |
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Girsanov's Theorem for Semimartingales (Multidimensional Version) |
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102 | (2) |
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104 | (1) |
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Limit Theorems for Semimartingales |
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105 | (10) |
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Stable Convergence of Semimartingales |
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107 | (8) |
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115 | (15) |
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115 | (4) |
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Eigen Functions and Martingales |
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119 | (3) |
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122 | (1) |
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Examples of Diffusion Processes |
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123 | (2) |
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125 | (5) |
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130 | (21) |
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Univariate Point Process (Simple) |
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130 | (7) |
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Multivariate Point Process |
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137 | (1) |
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Doubly Stochastic Poisson Process |
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137 | (3) |
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140 | (4) |
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144 | (7) |
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Exponential Families of Stochastic Processes |
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151 | (20) |
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151 | (3) |
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Exponential Families of Semimartingales |
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154 | (11) |
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Stochastic Time Transformation |
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165 | (6) |
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169 | (2) |
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Asymptotic Likelihood Theory |
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171 | (30) |
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171 | (7) |
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Different Types of Information and Their Relationships |
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171 | (7) |
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178 | (7) |
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Asymptotic Likelihood Theory for a Class of Exponential Families of Semimartingales |
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185 | (6) |
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Asymptotic Likelihood Theory for General Processes |
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191 | (5) |
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196 | (5) |
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198 | (3) |
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Asymptotic Likelihood Theory for Diffusion Processes with Jumps |
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201 | (38) |
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201 | (4) |
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201 | (4) |
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Absolute Continuity for Measures Generated by Diffusions with Jumps |
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205 | (5) |
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Score Vector and Information Matrix |
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210 | (5) |
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Asymptotic Likelihood Theory for Diffusion Processes with Jumps |
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215 | (4) |
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215 | (3) |
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218 | (1) |
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Asymptotic Likelihood Theory for a Special Class of Exponential Families |
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219 | (3) |
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222 | (12) |
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234 | (5) |
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235 | (4) |
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Quasi Likelihood and Semimartingales |
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239 | (32) |
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Quasi Likelihood and Discrete Time Processes |
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239 | (3) |
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Quasi Likelihood and Continuous Time Processes |
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242 | (1) |
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Quasi Likelihood and Special Semimartingale |
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243 | (14) |
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246 | (6) |
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252 | (1) |
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Existence and Consistency of the Quasi Likelihood Estimator |
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253 | (3) |
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Asymptotic Normality of the Quasi Likelihood Estimator |
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256 | (1) |
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Quasi Likelihood and Partially Specified Counting Processes |
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257 | (6) |
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263 | (3) |
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266 | (5) |
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268 | (3) |
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Local Asymptotic Behavior of Semimartingale Experiments |
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271 | (58) |
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Local Asymptotic Mixed Normality |
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271 | (11) |
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274 | (8) |
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Local Asymptotic Quadraticity |
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282 | (11) |
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289 | (4) |
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Local Asymptotic Infinite Divisibility |
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293 | (11) |
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295 | (9) |
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A Stochastic Dominated Convergence Theorem |
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304 | (1) |
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Local Asymptotic Normality |
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304 | (5) |
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309 | (13) |
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Counting Processes with Multiplicative Intensity |
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311 | (11) |
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322 | (7) |
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327 | (2) |
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Likelihood and Asymptotic Efficiency |
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329 | (52) |
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Fully Specified Likelihood (Factorizable Models) |
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329 | (7) |
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Local Asymptotic Normality |
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332 | (4) |
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Partially Specified Likelihood |
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336 | (13) |
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Partial Likelihood and Asymptotic Efficiency |
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349 | (3) |
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Partially Specified Likelihood and Asymptotic Efficiency (Counting Processes) |
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352 | (29) |
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Improvement of Preliminary Estimators |
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372 | (7) |
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379 | (2) |
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Inference for Counting Processes |
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381 | (100) |
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381 | (6) |
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Nonhomogeneous Poisson Processes |
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381 | (3) |
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Processes of Poisson Type |
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384 | (3) |
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387 | (27) |
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Estimation for Nonhomogeneous Poisson Process |
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387 | (3) |
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Asymptotic Properties of an MLE |
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390 | (1) |
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Limit Behavior of the Likelihood Ratio Process |
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391 | (2) |
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393 | (9) |
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M-Estimation for a Nonhomogeneous Poisson Process |
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402 | (2) |
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404 | (6) |
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410 | (4) |
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414 | (10) |
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420 | (2) |
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422 | (2) |
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424 | (47) |
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Estimation by the Kernel Method (Nonhomogeneous Poisson Process) |
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424 | (17) |
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Estimation by the Method of Sieves |
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441 | (8) |
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Estimation by the Method of Penalty Functions |
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449 | (5) |
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Estimation by the Method of Martingale Estimators |
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454 | (8) |
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Maximum Likelihood Estimation |
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462 | (9) |
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Additive-Multiplicative Hazard Models |
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471 | (10) |
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476 | (5) |
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Inference for Semimartingale Regression Models |
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481 | (52) |
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Estimation by the Quasi-Least-Squares Method |
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481 | (14) |
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484 | (8) |
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492 | (3) |
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Estimation by the Maximum Likelihood Method |
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495 | (21) |
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Estimation of Parameters when the Characteristics of the Noise are Known |
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497 | (17) |
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Estimator of the Characteristics of the Noise |
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514 | (2) |
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Estimation by the Method of Sieves |
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516 | (10) |
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Nonlinear Semimartingale Regression Models |
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526 | (7) |
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530 | (3) |
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Applications to Stochastic Modeling |
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533 | (10) |
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533 | (1) |
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Applications to Engineering and Economic Systems |
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533 | (5) |
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Application to Modeling of Neuron Movement in a Nervous System |
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538 | (5) |
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541 | (2) |
A Doleans Measure for Semimartingales and Burkholder's Inequality for Martingales |
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543 | (2) |
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543 | (1) |
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Burkholder's Inequality for Martingales |
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544 | (1) |
B Interchanging Stochastic Integration and Ordinary Differentiation and Fubini-Type Theorem for Stochastic Integrals |
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545 | (8) |
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Interchanging Stochastic Integration and Ordinary Differentiation |
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545 | (5) |
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Fubini-Type Theorem for Stochastic Integrals |
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550 | (1) |
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Sufficient Conditions for the Differntialbility of an Ito Stochastic Integral |
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550 | (3) |
C The Fundamental Identity of Sequential Analysis |
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553 | (2) |
D Stieltjes-Lebesgue Calculus |
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555 | (10) |
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558 | (2) |
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Application of Product Formula |
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560 | (1) |
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561 | (4) |
E A Useful Lemma |
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565 | (4) |
F Contiguity |
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569 | (4) |
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570 | (3) |
G Notes |
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573 | (6) |
Index |
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579 | |