Business Statistics - University of California at Los Angeles
16xWEBRip | English | AVI + PDF Guidebook | 640 x 480 | DX50 ~404 kbps | 29.970 fps
MP3 | 128 kbps | 48.0 KHz | 2 channels | 12:00:22 | 2.75 GB
MP3 | 128 kbps | 48.0 KHz | 2 channels | 12:00:22 | 2.75 GB
Genre: eLearning Video / Business, Economics and Finance
In our tightly wired world, business executives make decisions under pressure. Almost always, these decisions must be made with less than complete information. This course is about how to effectively use data that is currently available (or can be obtained within a reasonable time frame and cost) to improve business decision-making. We will use business examples from functional areas such as finance, marketing, human resources, and operations to illustrate the role of data analysis in decision making. This course is not designed to be a dry sleepy-time set of abstract, mathematical lectures. My goal is to make statistics come alive in the context of life and in the context of real business problems demanding solution.Quantitative methods such as statistical analysis must not be viewed as the be-all and end-all of decision making. The vital role that seasoned business intuition plays in effective decision making can not be overemphasized. Nevertheless, analytical techniques are a central part of many decisions. In fact, we illustrate in this course how statistics and probability can effectively work together with managerial intuition in business problem solving.
The advent of personal computer statistical software that readily generates visual representations of data and performs sophisticated analyses enables a manager to concentrate on the meaning of data. The burden of computation has largely been eliminated, and business people are now free to focus on probing issues and searching for creative solutions. In this course, we illustrate the use of computer-generated output that promotes visualization of data.
"Students tell me that statistics was obscure and inaccessible for them as undergraduates. On the first day of class, they enter my MBA course on Statistics and Data Analysis prepared for the worst. Fortunately, I am often able to help them build intuition for statistics, appreciate how the content can be applied and actually enjoy the experience.
Whatever, previous experience you have had with statistics (if any), our main objective will be to make the content useful to you in business decision-making and relevant to decisions we all make in everyday life."
Lectures:
In Lecture 1 Professor Geis compares and contrasts statistics with probability. He also details and illustrates the major activities of statistical analysis.
In Lecture 2 we discuss the purpose of descriptive statistics. What are some important ways to view and summarize data? Why is variability so important in analyzing a business situation?
Lecture 3 explores probability concepts. Probability plays an important role in analyzing business situations and in refining intuition. In business situations, complexity is often the norm. Therefore, in order for a model to be adequate, it must have some room for complexity and subtlety.
Lecture 4 combines event probabilities. We discuss how to obtain probabilities associated with more complex events. We introduce the notion of simulation, how it relates to probability, and how it can be used in business decision-making. We develop the intuition behind conditional probability, independence, and mutual exclusivity.
Lecture 5 shows how simulation builds on our understanding of probability. We review the steps in setting up a Monte Carlo simulation. Understanding how probabilities work and distributions are built is an essential element to building a good simulation model.
In Lecture 6 we build intuition about the notion of a random variable. We differentiate between discrete and continuous random variables and related distributions. We show how distributions are related to business problem-solving and to simulation. Discrete and continuous distributions enable us to mathematically calculate business solutions and to simulate business problems.
Lecture 7 discusses the use of discrete distributions. We give special attention to two particularly useful discrete distributions. The binomial distribution plays a pivotal role in business situations that involve percentage estimates. The Poisson distribution is useful in modeling the number of times an event is likely to happen, given a constant average rate of occurrence.
In Lecture 8 you see how the normal distribution plays a very special role in statistics and probability. In this lecture we take a look at a continuous distribution known as the normal distribution. We provide examples to illustrate how the standardized normal distribution is used in business.
Lecture 9 answers questions about sampling. What are the benefits of random sampling in business analysis and decision-making? What is a sampling distribution and why is it important? What is a simple random sample and how do you select one? The issue of whether or not a sample is representative of the population is a central problem addressed by statistics.
Lecture 10 looks at the central limit theorem. This theorem provides us with one of the most important results in statistics. What is the central limit theorem and how is it useful in business analysis? How does it help us work with sampling distributions for statistics such as the sample mean and sample proportion?
In Lecture 11 we explain the intuition behind confidence intervals and how they are used in a business context. In business, we often need to estimate the characteristics of a population based on information provided by a sample chosen and analyzed to give us a "good enough" estimate. Confidence intervals translate this "good enough" estimate into a mathematical statement of the level of confidence.
Lecture 12 continues our discussion of confidence intervals. We show how to construct confidence intervals for parameters other than the mean. We also consider what is necessary if confidence intervals are to be useful.
In Lecture 13 we explore the use of hypothesis testing in business. In a business situation our data is limited to a sample of reality. Statistical techniques can test how large a part chance plays in the results reflected by the designated sample. In designing a hypothesis test, we intend to determine whether or not a claim, such as response rate from an advertising campaign, should be allowed to stand.
In Lecture 14 we discuss how linear regression is a method for modeling the relationship between two variables. Examples are advertising and sales or training and job performance. Regression is a widely used technique and often provides a useful mathematical formulation of a real-world situation.
We find in Lecture 15 that just because we run a regression does not guarantee that it is useful or valid. A regression may be valid only for a small range of values. In this lecture, we explain how to determine whether or not the regression equation is meaningful and valid for business analysis. The goal of regression is not just to fit a line to a set of data points but to be able to use the line to forecast and predict.
Lecture 16 provides an introduction to multiple regression. Multiple regression is an extension of simple linear regression in that more than one independent variable is used in attempting to explain variation in the dependent variable. We also explore the use of dummy variables in regression models. In business situations,when analytical and statistical modeling are combined with business experience and intuition, more effective decision-making is often the result.
also You can watch my other last: Business-posts
General
Complete name : 09. Sampling Distributions and Estimators.avi
Format : AVI
Format/Info : Audio Video Interleave
File size : 176 MiB
Duration : 45mn 17s
Overall bit rate : 543 Kbps
Writing library : VirtualDub build 24463/release
Video
ID : 0
Format : MPEG-4 Visual
Format settings, BVOP : 1
Format settings, QPel : No
Format settings, GMC : No warppoints
Format settings, Matrix : Default (H.263)
Muxing mode : Packed bitstream
Codec ID : DX50
Codec ID/Hint : DivX 5
Duration : 45mn 17s
Bit rate : 404 Kbps
Width : 640 pixels
Height : 480 pixels
Display aspect ratio : 4:3
Frame rate : 29.970 fps
Color space : YUV
Chroma subsampling : 4:2:0
Bit depth : 8 bits
Scan type : Progressive
Compression mode : Lossy
Bits/(Pixel*Frame) : 0.044
Stream size : 131 MiB (74%)
Writing library : DivX 6.2.5 (UTC 2006-07)
Audio
ID : 1
Format : MPEG Audio
Format version : Version 1
Format profile : Layer 3
Mode : Joint stereo
Mode extension : MS Stereo
Codec ID : 55
Codec ID/Hint : MP3
Duration : 45mn 17s
Bit rate mode : Constant
Bit rate : 128 Kbps
Channel(s) : 2 channels
Sampling rate : 48.0 KHz
Compression mode : Lossy
Stream size : 41.5 MiB (24%)
Alignment : Aligned on interleaves
Interleave, duration : 33 ms (1.00 video frame)
Interleave, preload duration : 504 ms
Writing library : LAME3.97
Complete name : 09. Sampling Distributions and Estimators.avi
Format : AVI
Format/Info : Audio Video Interleave
File size : 176 MiB
Duration : 45mn 17s
Overall bit rate : 543 Kbps
Writing library : VirtualDub build 24463/release
Video
ID : 0
Format : MPEG-4 Visual
Format settings, BVOP : 1
Format settings, QPel : No
Format settings, GMC : No warppoints
Format settings, Matrix : Default (H.263)
Muxing mode : Packed bitstream
Codec ID : DX50
Codec ID/Hint : DivX 5
Duration : 45mn 17s
Bit rate : 404 Kbps
Width : 640 pixels
Height : 480 pixels
Display aspect ratio : 4:3
Frame rate : 29.970 fps
Color space : YUV
Chroma subsampling : 4:2:0
Bit depth : 8 bits
Scan type : Progressive
Compression mode : Lossy
Bits/(Pixel*Frame) : 0.044
Stream size : 131 MiB (74%)
Writing library : DivX 6.2.5 (UTC 2006-07)
Audio
ID : 1
Format : MPEG Audio
Format version : Version 1
Format profile : Layer 3
Mode : Joint stereo
Mode extension : MS Stereo
Codec ID : 55
Codec ID/Hint : MP3
Duration : 45mn 17s
Bit rate mode : Constant
Bit rate : 128 Kbps
Channel(s) : 2 channels
Sampling rate : 48.0 KHz
Compression mode : Lossy
Stream size : 41.5 MiB (24%)
Alignment : Aligned on interleaves
Interleave, duration : 33 ms (1.00 video frame)
Interleave, preload duration : 504 ms
Writing library : LAME3.97
ScreenShots
Exclusive eLearning Videos ParRus-blog ← add to bookmarks