T.R | Title | User | Personal Name | Date | Lines |
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1065.1 | a couple I know of... | CTCADM::ROTH | If you plant ice you'll harvest wind | Fri Apr 21 1989 12:48 | 13 |
| I'd also be curious if there's anything substantial out there which
is not indigestibly abstract (and not a childish cookbook.)
Two that I have are are Morris DeGroot's book "Intro to Probablility and
Statistics" (or something like that) and Cramer's old book "Mathematical
Statistics". That's probably still in print, from Princeton U. Press.
I also have a little book on analysis of variance by Mann called "Design of
Experiments" - got used. "Well worth a dollar..." as they say.
I think DeGroot's book is fairly good as an introduction.
- Jim
|
1065.2 | More information. | CADSYS::COOPER | Topher Cooper | Fri Apr 21 1989 12:52 | 11 |
| Many -- what does your friend want to learn about statistics? Theory
or practice and at what level, or just a general introductory overview?
Traditional or Bayesian? If practice, design of experiments,
hypothesis testing, parameter estimation (including regression, factor
analysis, etc) or exploratory data analysis? Slanted towards
engineering, hard sciences, social sciences, medicine, economics,
or biology?
Need some background to make a recomenation.
Topher
|
1065.3 | | ALIEN::POSTPISCHIL | Always mount a scratch monkey. | Fri Apr 21 1989 13:31 | 8 |
| Re .2:
I think it is more for reference than learning. It should cover
general theory, not application to any particular field. Something
touching on introductory at its low end is probably appropriate.
-- edp
|
1065.4 | More on stat's textbooks | CSCOA5::BERGH_P | Peter Bergh, DTN 435-2658 | Fri Apr 21 1989 15:44 | 6 |
| Cramer's book is excellent, but requires a fair amount of mathematical
sophistication (he uses theory of measures). Another excellent
set of 2 books is the books by Feller, called essentially Theory
of Probability (the exact title escapes me), but this also requires
quite some mathematical sophistication (in particular volume 2,
which deals with continuous probability distributions).
|
1065.5 | | CTCADM::ROTH | If you plant ice you'll harvest wind | Fri Apr 21 1989 18:12 | 14 |
| Cramer's book is somewhat concise mathematically, but is still
relatively down to earth - the measure theory in there is good because
there's motivation for it. I like to see clear derivations of
things, and not just some magic formula out of nowhere.
Feller's books are great - lots of examples and detail! But they're
not really statistics books.
Re .2 - if you could mention some good examples you've seen in
various areas that would be interesting. Lots of the statistics
books out there seem pretty terrible... some of it's like punk
mathematics.
- Jim
|
1065.6 | From my undergrad days many many years ago | POOL::HALLYB | The Smart Money was on Goliath | Tue Apr 25 1989 14:54 | 18 |
| Despite my miserable performance in note 1058 I'll recommend the book
"Introduction to Mathematical Statistics" by Hogg� & Craig. (Wiley(?))
It's an undergraduate-level introduction and requires undergraduate
calculus. They deal in Moment-generating functions, not Characteristic
functions (which kind of implies the undergraduate level).
Anyhow, one of the nice things about the book is that you can read a
chapter, work all the problems and then go on to the next. It's a good
blend of theorem/problem. Up until this real hard one late in the book...
Another interesting possibility is maybe picking up one or more of the
Schaum's Outline Series. Some of those are really good if that's your
style of working.
John
--------------------
�Pronounced "Hoague"
|
1065.7 | the one I use | PULSAR::WALLY | Wally Neilsen-Steinhardt | Wed Apr 26 1989 18:17 | 26 |
| My favorite is _Statistics: Probability, Inference, and Decision_
by R. L. Winkler and W. L. Hays, Holt Rinehart and Winston, NY,
1975.
It's a big thick book which starts slow and easy, with a chapter
each on sets and probability theory, then three chapters on probability
distributions, then chapters on estimation, hypothesis testing,
Bayesian inference and decision theory, concluding with three chapters
on correlation, analysis of variance and non-parametric statistics.
The audience seems to be people who need to make decisions based
on statistical data, and who have access to programs for carrying
out the calculations. So there is a lot of discussion of the
underlying assumptions of this or that approach, where there may
be practical difficulties, and how the results may be used to make
decisions.
It is fairly light on the math, uses only some simple calculus,
and does not include a lot of fascinating but less useful
generalizations and mathematical superstructure.
There are heaps of examples, many quite practical, in the text and
in the problems.
I prefer it to Feller because the authors don't waste my time attacking
anything beyond a narrow frequentist interpretation of probability.
|
1065.8 | Try this... | BESS::NAGARAJAN | | Mon May 01 1989 16:50 | 6 |
| Re: .3 I think .. Since you are looking for fundamentals and rudiments
without a lot of heavy mathematical treatment, try
STATISTICAL ANALYSIS FOR DECISION MAKING by Morris Hamburg.
It is quite good for introductory level statistical concepts.
|
1065.9 | another good prob book | LEVERS::J_FERRARA | | Mon Dec 04 1989 16:15 | 3 |
| Try Probability,Random Variables,and Stochastic processes
Athonasios Papoulis
|