Two-way ANOVA - the basics | interaction | two-way vs one-way
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In this video, we will discuss the basics of a two-way ANOVA and try to understand the meaning of an interaction between two factors. We will also discuss the advantages by using a two-way ANOVA instead of using 2 one-way ANOVAs.
1. The basics
2. Interaction 02:32
3. Null hypotheses 04:05
4. Interpret the p-values in an ANOVA table 04:42
5. Post-hoc tests 05:51
6. Example with plant growth 08:47
7. Two-way vs one-way ANOVA 12:44
Видео Two-way ANOVA - the basics | interaction | two-way vs one-way канала TileStats
In this video, we will discuss the basics of a two-way ANOVA and try to understand the meaning of an interaction between two factors. We will also discuss the advantages by using a two-way ANOVA instead of using 2 one-way ANOVAs.
1. The basics
2. Interaction 02:32
3. Null hypotheses 04:05
4. Interpret the p-values in an ANOVA table 04:42
5. Post-hoc tests 05:51
6. Example with plant growth 08:47
7. Two-way vs one-way ANOVA 12:44
Видео Two-way ANOVA - the basics | interaction | two-way vs one-way канала TileStats
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