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1 | (26) |
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1.1 Stationarity and Invariance |
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1 | (4) |
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1.2 Stationary Processes with a Finite Variance |
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5 | (8) |
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1.3 Measurability and Continuity in Probability |
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13 | (2) |
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15 | (10) |
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25 | (1) |
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1.6 Exercises to Chapter 1 |
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25 | (2) |
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2 Elements of Ergodic Theory of Stationary Processes and Strong Mixing |
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27 | (46) |
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2.1 Basic Definitions and Ergodicity |
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27 | (9) |
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2.2 Mixing and Weak Mixing |
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36 | (17) |
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53 | (7) |
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2.4 Conservative and Dissipative Maps |
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60 | (9) |
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69 | (1) |
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2.6 Exercises to Chapter 2 |
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70 | (3) |
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3 Infinitely Divisible Processes |
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73 | (60) |
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3.1 Infinitely Divisible Random Variables, Vectors, and Processes |
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73 | (8) |
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3.2 Infinitely Divisible Random Measures |
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81 | (8) |
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3.3 Infinitely Divisible Processes as Stochastic Integrals |
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89 | (14) |
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3.4 Series Representations |
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103 | (6) |
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3.5 Examples of Infinitely Divisible Self-Similar Processes |
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109 | (11) |
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3.6 Stationary Infinitely Divisible Processes |
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120 | (8) |
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128 | (1) |
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3.8 Exercises to Chapter 3 |
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129 | (4) |
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133 | (42) |
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4.1 What Are Heavy Tails? Subexponentiality |
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133 | (13) |
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4.2 Regularly Varying Random Variables |
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146 | (8) |
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4.3 Multivariate Regularly Varying Tails |
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154 | (13) |
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4.4 Heavy Tails and Convergence of Random Measures |
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167 | (4) |
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171 | (1) |
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4.6 Exercises to Chapter 4 |
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172 | (3) |
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5 Introduction to Long-Range Dependence |
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175 | (18) |
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175 | (7) |
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5.2 The Joseph Effect and Nonstationarity |
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182 | (6) |
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5.3 Long Memory, Mixing, and Strong Mixing |
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188 | (2) |
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190 | (1) |
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5.5 Exercises to Chapter 5 |
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190 | (3) |
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6 Second-Order Theory of Long-Range Dependence |
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193 | (36) |
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6.1 Time-Domain Approaches |
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193 | (4) |
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6.2 Spectral Domain Approaches |
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197 | (19) |
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6.3 Pointwise Transformations of Gaussian Processes |
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216 | (10) |
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226 | (1) |
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6.5 Exercises to Chapter 6 |
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227 | (2) |
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7 Fractionally Differenced and Fractionally Integrated Processes |
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229 | (18) |
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7.1 Fractional Integration and Long Memory |
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229 | (4) |
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7.2 Fractional Integration of Second-Order Processes |
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233 | (9) |
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7.3 Fractional Integration of Processes with Infinite Variance |
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242 | (3) |
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245 | (1) |
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7.5 Exercises to Chapter 7 |
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246 | (1) |
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247 | (38) |
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8.1 Self-Similarity, Stationarity, and Lamperti's Theorem |
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247 | (8) |
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8.2 General Properties of Self-Similar Processes |
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255 | (8) |
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8.3 SSSI Processes with Finite Variance |
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263 | (5) |
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8.4 SSSI Processes Without a Finite Variance |
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268 | (5) |
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8.5 What Is in the Hurst Exponent? Ergodicity and Mixing |
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273 | (8) |
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281 | (1) |
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8.7 Exercises to Chapter 8 |
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282 | (3) |
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9 Long-Range Dependence as a Phase Transition |
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285 | (78) |
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9.1 Why Phase Transitions? |
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285 | (2) |
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9.2 Phase Transitions in Partial Sums |
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287 | (5) |
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9.3 Partial Sums of Finite-Variance Linear Processes |
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292 | (8) |
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9.4 Partial Sums of Finite-Variance Infinitely Divisible Processes |
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300 | (12) |
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9.5 Partial Sums of Infinite-Variance Linear Processes |
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312 | (13) |
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9.6 Partial Sums of Infinite-Variance Infinitely Divisible Processes |
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325 | (12) |
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9.7 Phase Transitions in Partial Maxima |
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337 | (6) |
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9.8 Partial Maxima of Stationary Stable Processes |
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343 | (12) |
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355 | (4) |
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9.10 Exercises to Chapter 9 |
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359 | (4) |
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363 | (42) |
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363 | (1) |
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10.2 Weak and Vague Convergence |
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364 | (5) |
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369 | (4) |
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10.4 Occupation Measures and Local Times |
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373 | (11) |
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10.5 Karamata Theory for Regularly Varying Functions |
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384 | (13) |
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10.6 Multiple Integrals with Respect to Gaussian and SαS Measures |
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397 | (2) |
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10.7 Inequalities, Random Series, and Sample Continuity |
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399 | (3) |
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10.8 Comments on Chapter 10 |
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402 | (1) |
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10.9 Exercises to Chapter 10 |
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403 | (2) |
Bibliography |
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405 | (8) |
Index |
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413 | |