## An introduction to probability theory and its applications, Volume 1Major changes in this edition include the substitution of probabilistic arguments for combinatorial artifices, and the addition of new sections on branching processes, Markov chains, and the De Moivre-Laplace theorem. |

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#### LibraryThing Review

User Review - redgiant - LibraryThingIf you were to lock me up for a year and allow only one book for the whole time, this is the book I would take with me. The way each problem is treated is delightful. The book is slightly dated and so ... Read full review

### Contents

chapter Page | 1 |

The Sample Space | 7 |

Elements of Combinatorial Analysis | 26 |

Copyright | |

105 other sections not shown

### Other editions - View all

AN INTRODUCTION TO PROBABILITY: THEORY AND ITS APPLICATIONS, 3RD ED, Volume 1 William Feller No preview available - 2008 |

An Introduction to Probability Theory and Its Applications, Volume 1 William Feller No preview available - 1968 |

An Introduction to Probability Theory and Its Applications, Volume 1 William Feller No preview available - 1968 |

### Common terms and phrases

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