• Prove It To Me - Real Research, Real Data, No BS

  • 著者: Dr. Matt Law
  • ポッドキャスト

Prove It To Me - Real Research, Real Data, No BS

著者: Dr. Matt Law
  • サマリー

  • Do you get tired of big ideas, exorbitant pitches, inactionable concepts, and empty promises? Cool, me too. I’m Dr. Matt Law, and I’m the host of ”Prove It To Me”. This podcast aims to put theories to the test and bring good research to light by showcasing evidence-based solutions. Guests will be challenged to identify things that actually work, provide research and data to back up their claims, and tell us how to measure and manage real solutions. You’ll hear about a lot of environmental health and occupational safety theories and concepts, but you’ll also learn about general business solutions and maybe even some everyday things that you can apply to your life. We’ll also cover general topics about research, whether it be about measurement tools, statistics, or what differentiates good research from, well, the not so good information out there. ”Prove It To Me” is nerdy. It is serious. It is jovial and fun. It is optionally explicit, but your kids will probably be asleep before we get to any bad stuff anyway. If you’re ready to cut through the BS, maybe learn a little bit about research, and get into the nitty gritty of whether big ideas work or not, you’re in the right place. Have some evidence-based research to share? Send an email to contact@proveitpod.com today! Disclaimer: The views and opinions expressed in this podcast are those of the host and its guests and do not necessarily represent the official position, opinion, or strategies of their employers or companies. Examples of research and data analysis discussed within this podcast are only examples. They should not be utilized in the real world as the only solution available as they are based on very limited, often single-use case, and sometimes dated information. Assumptions made within this discussion about research and data analyses are not necessarily representative of the position of the host, the guests, or their employers or companies. No part of this podcast may be reproduced, stored in a retrieval system, or transmitted in any form or by any means, mechanical, electronic, recording, or otherwise without prior written permission of the creator of the podcast. The presentation of content by the guests does not necessarily constitute an active endorsement of the content by the host.
    Copyright 2024 All rights reserved.
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あらすじ・解説

Do you get tired of big ideas, exorbitant pitches, inactionable concepts, and empty promises? Cool, me too. I’m Dr. Matt Law, and I’m the host of ”Prove It To Me”. This podcast aims to put theories to the test and bring good research to light by showcasing evidence-based solutions. Guests will be challenged to identify things that actually work, provide research and data to back up their claims, and tell us how to measure and manage real solutions. You’ll hear about a lot of environmental health and occupational safety theories and concepts, but you’ll also learn about general business solutions and maybe even some everyday things that you can apply to your life. We’ll also cover general topics about research, whether it be about measurement tools, statistics, or what differentiates good research from, well, the not so good information out there. ”Prove It To Me” is nerdy. It is serious. It is jovial and fun. It is optionally explicit, but your kids will probably be asleep before we get to any bad stuff anyway. If you’re ready to cut through the BS, maybe learn a little bit about research, and get into the nitty gritty of whether big ideas work or not, you’re in the right place. Have some evidence-based research to share? Send an email to contact@proveitpod.com today! Disclaimer: The views and opinions expressed in this podcast are those of the host and its guests and do not necessarily represent the official position, opinion, or strategies of their employers or companies. Examples of research and data analysis discussed within this podcast are only examples. They should not be utilized in the real world as the only solution available as they are based on very limited, often single-use case, and sometimes dated information. Assumptions made within this discussion about research and data analyses are not necessarily representative of the position of the host, the guests, or their employers or companies. No part of this podcast may be reproduced, stored in a retrieval system, or transmitted in any form or by any means, mechanical, electronic, recording, or otherwise without prior written permission of the creator of the podcast. The presentation of content by the guests does not necessarily constitute an active endorsement of the content by the host.
Copyright 2024 All rights reserved.
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  • Episode 102 - Dr. Todd Loushine - Prove It To Me
    2024/11/22

    On today's episode, I'm joined by Dr. Todd Loushine, Ph.D., P.E., CSP, CIH to talk about research, the difference between master's degrees and doctoral programs, correlation vs. causation, and how to read and interpret the good, the bad, and the ugly in research.

    Dr. Loushine is an associate professor at the University of Wisconsin-Whitewater, specializing in everything from basic OSHA compliance to advanced data analysis techniques and research methods in EHS. Last year, Professor Loushine put his over 30 years of experience “to the test” by working part-time as a safety manager for Research Products Corporation in Madison Wisconsin. Todd’s career began with a B.S. degree in Chemical Engineering from the University of Minnesota and a fortuitus career initiation as a compliance officer with Minnesota-OSHA. He completed his M.S. and Ph.D. in Industrial Engineering from the University of Wisconsin-Madison, with special emphasis on psychology and sociology. Professor Loushine has dedicated his life to educating and assisting others on how to systematically evaluate work, and manage organizations to improve safety, productivity, and job satisfaction. Todd’s approach to safety is systems-based and data-driven, which defines safety as an attribute of work and utilizes a quality management approach. He strives to learn from workers (and students) to understand it from their perspective to be a better instructor while optimizing the design and function of the work processes and relationships.

    Glossary of Terms:

    Variable

    A variable is an observable characteristic. In research, a variable needs to be measured in some way. There are all sorts of different types of variables in research, but today we are just focused on two types of variables. The first is independent. The independent variable is the variable that changes, and in research we try to measure whether changing the independent variable influences the dependent variable. For example, if we want to find out the relationship between watering an apple tree and the number of apples it produces, the amount of water is the independent variable, and the number of apples produced is the dependent variable.

    Treatment

    Treatment, in simple terms, is another way to refer to the independent variable and the changes made to the independent variable in the research. In the same example I just gave, the treatment is changing the amount of water given to the apple tree.

    Correlation

    This is a measurement of the relationship between two variables, and in research it is a statistical calculation. Keeping with the same example, if I observe that more water given to the tree results in more apples, I have observed a correlation. In fact, this would be a positive correlation, because more water means more apples. A negative correlation would be if more water meant less apples.

    Causation

    Causation is different from correlation in that we are able to prove, statistically, that the independent variable, and nothing else, has a direct effect on the dependent variable. If we go back to the apple tree, causation would mean that we have observed the watering of enough apple trees to determine almost exactly how much more water I needed to get a certain amount of apples. However, it’s not causation until we have also determined that nothing else is affecting apple growth, so we would also have to measure and either rule out or control the potential effects of soil health, sunlight, the age of the tree, the amount of wildlife and insects that interact with the tree, the proximity of the tree to other trees and what types of trees those are… You get the idea, right? By the way, all those other variables like soil and sunlight would be confounding variables that affect the validity and reliability of my study.

    Validity and Reliability

    Validity is the extent to which a study accurately measures something. Reliability means we are able to get the same result over and over again. These are extremely important parts of research, and yes, there are several statistical tests that let us calculate validity and reliability.

    Type 1/Type 2 error

    Type 1 error is a false-positive, meaning that our study reflected that more water means more apples, but in reality this is not true. Type 2 error is a false-negative, which would mean that our study showed that more water did not give us more apples, but in reality more water does give us more apples.

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    1 時間 1 分
  • Introducing Prove It To Me - Real RESEARCH, Real DATA, No BS
    2024/11/13

    I’m Dr. Matt Law, and I'm the host of "Prove It To Me". This podcast aims to put theories to the test and bring good research to light by showcasing evidence-based solutions. Guests will be challenged to identify things that actually work, provide research and data to back up their claims, and tell us how to measure and manage real solutions. Have some evidence-based research to share? Send an email to contact@proveitpod.com today!

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    6 分

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