# Repeated Measures MANOVA using Anova() in r

Apologies in advance for the wall of text, my question is right at the beginning, the rest is just me trying to explain where I am at and why. Thanks

I am currently trying to run a repeated measures MANOVA on a dataset of 3 dependent variables (AllRoads, Natural, and Upland), using a single predictor variable (Year) repeated within specific animals. The dataset is attached below (First chunk of data).

Essentially what I need to do is try and predict the scores under AllRoads, Natural, and Upland, using Year, which is repeated within Animal. So, this seems to be a case of a longitudinal, within-subjects (repeated measures) MANOVA with k = 2 levels (Year 1, Year 2) and 3 response variables, and I'm interested in whether the animals differ over time. I can't for the life of me find anything that says how to do this in a form I can understand. From what I can tell around the web I should be using Anova() and lm() along the lines of...

``````mod.ok <- lm(cbind(AllRoads,Natural,Upland) ~  Year, data=foo)
``````

And then create a secondary data frame that describes the factors "defining the intra-subject model". Following the example within the `?Anova()` help...

``````Habitat <- factor(rep(c("AllRoads", "Natural", "Upland"), c(39, 39, 39)),
AnimalLet <- factor(rep(c("A","B","C"),c(39,39,39)))
AnimalNum <- factor(rep(c(1:39),3))
idata <- data.frame(Habitat, AnimalLet,AnimalNum)
idata\$Animal<- paste(idata\$AnimalLet,idata\$AnimalNum)
idata<-subset(idata,select=c(Habitat,Animal))
idata
``````

The problem is that I can't find out a way to reconcile the code and how to set up my dataframe. From what I can tell from here I need to put my data in a long form, with a new column for each combination of dependent variables and repeated measure. So I have created a new dataset (attached below, the second section) in a form that I think is appropriate. With a column representing combinations of one of the dependent variable measures (eg: All Roads represented by the letter A) and one of the animals (a number from 1 to 39). I then have to change it over to a matrix due to an apparent bug in lm() that limits the length of an equation.

``````Headers<-c("A1","A2","A3","A4","A5","A6","A7","A8","A9","A10","A11","A12",
"A13","A14","A15","A16","A17","A18","A19","A20","A21","A22","A23","A24",
"A25","A26","A27","A28","A29","A30","A31","A32","A33","A34","A35","A36",
"A37","A38","A39","B1","B2","B3","B4","B5","B6","B7","B8","B9","B10","B11","B12",
"B13","B14","B15","B16","B17","B18","B19","B20","B21","B22","B23","B24",
"B25","B26","B27","B28","B29","B30","B31","B32","B33","B34","B35","B36",
"B37","B38","B39","C1","C2","C3","C4","C5","C6","C7","C8","C9","C10","C11","C12",
"C13","C14","C15","C16","C17","C18","C19","C20","C21","C22","C23","C24",
"C25","C26","C27","C28","C29","C30","C31","C32","C33","C34","C35","C36",
"C37","C38","C39")
``````

The code to run the equation is something like this.

``````changed.foo\$Year<-as.factor(changed.foo\$Year)
(av.ok <- Anova(mod.ok, idata=idata, idesign=~Animal))
summary(av.ok, multivariate=FALSE)
``````

But my statistical understanding, despite my best efforts, doesn't seem to exist and I can't figure out if I have done this correctly or if its testing what I want it to be testing. I get a number of errors when I run through this, but I still seem get results spit out at the end. If anyone is familiar with this, and how to set up the dataframe in a way that I could test what I want to test, that would be amazing. Thanks again to everyone that reads through these.

``````foo<-structure(list(Animal = structure(c(1L, 1L, 2L, 2L, 3L, 3L, 4L,
4L, 5L, 5L, 6L, 6L, 7L, 7L, 8L, 8L, 9L, 9L, 10L, 10L, 11L, 11L,
12L, 12L, 13L, 13L, 14L, 14L, 15L, 15L, 16L, 16L, 17L, 17L, 18L,
18L, 19L, 19L, 20L, 20L, 21L, 21L, 22L, 22L, 23L, 23L, 24L, 24L,
25L, 25L, 26L, 26L, 27L, 27L, 28L, 28L, 29L, 29L, 30L, 30L, 31L,
31L, 32L, 32L, 33L, 33L, 34L, 34L, 35L, 35L, 36L, 36L, 37L, 37L,
38L, 38L, 39L, 39L), .Label = c("107", "108", "109", "111", "112",
"170", "172", "173", "175", "176", "177", "179", "180", "181",
"182", "183", "184", "188", "Atiko11", "Atiko14", "Atiko19",
"BEREN04", "BLDVN06", "BLDVN13", "GPS09", "OWL07", "OWL10", "OWL11",
"OWL17", "OWL18", "OWL22", "OWL31", "OWL32", "OWL33", "OWL34",
"OWL36", "ROUND05", "ROUND06", "ROUND09"), class = "factor"),
Year = structure(c(1L, 2L, 1L, 2L, 1L, 2L, 1L, 2L, 1L,
2L, 1L, 2L, 1L, 2L, 1L, 2L, 1L, 2L, 1L, 2L, 1L, 2L, 1L, 2L,
1L, 2L, 1L, 2L, 1L, 2L, 1L, 2L, 1L, 2L, 1L, 2L, 1L, 2L, 1L,
2L, 1L, 2L, 1L, 2L, 1L, 2L, 1L, 2L, 1L, 2L, 1L, 2L, 1L, 2L,
1L, 2L, 1L, 2L, 1L, 2L, 1L, 2L, 1L, 2L, 1L, 2L, 1L, 2L, 1L,
2L, 1L, 2L, 1L, 2L, 1L, 2L, 1L, 2L), .Label = c("1", "2"), class = "factor"),
9.80764823276194, 8.48306747668686, 8.78063379949498, 8.5014412063236,
8.39253658681668, 9.364740000405, 7.88069635914486, 6.02908141067929,
6.77098053714415, 7.76958982506023, 8.37339980032762, 9.2531808993162,
7.91613021356664, 4.94875989037817, 5.0998664278242, 7.80180040190897,
8.01782548382617, 8.24630268160429, 8.3725912216493, 8.07344749952323,
9.05678951222089, 6.8134445995109, 9.08763990842217, 7.61775957660851,
8.29970031161084, 4.59367580656236, 4.93035446283545, 4.46590811865458,
5.55074228911297, 7.55206229412261, 5.8502849336452, 6.71918567228442,
7.7875005731033, 8.50268850521336, 8.8698199525084, 9.45876173047466,
9.26136613057923, 8.18989210427743, 9.1005069046055, 9.18850367736701,
9.76007896924077, 7.57301725605255, 8.26821888006751, 7.65377949914285,
7.03667605904898, 7.51261754467451, 7.98070782086967, 7.04263576117595,
7.44401470400494, 7.18184539791445, 6.9652377143955, 7.40245152081824,
7.09281118926005, 7.78286680968819, 8.13211877295581, 6.65562419079467,
7.85665148489085, 7.81237820598861, 8.03889929265273, 8.0555386116567,
7.87161638376371, 7.18652273404434, 8.22073942657733, 8.13106001160756,
7.89536151627289, 8.06601916721442, 7.92963050142986, 7.59072585309052,
7.88240925415321, 9.85215916981369, 9.5634121656919, 9.51103738150546,
8.74870165906207, 9.4555976035355, 8.87206651340834), Natural = c(9.24869532585265,
8.66664714458457, 9.58313076174769, 7.77804395629449, 8.1212575335242,
9.31735451963067, 7.59121280899457, 8.29814837167099, 9.02044160909684,
9.2801329236337, 9.35173865597326, 8.6301051232269, 9.4156050444031,
8.31217602669009, 8.98275841406304, 9.37207041895938, 9.13830716907635,
8.41049845274527, 9.74480997508514, 9.76268900163939, 7.67585531277848,
8.31788822958187, 9.12422210254075, 7.41835230519313, 8.94771321581284,
7.1255129237342, 9.01312850268703, 8.79151136340989, 9.0409576040075,
8.35913488675796, 9.0429524653669, 8.26748563469076, 9.19071572883988,
6.86223476368033, 8.7706386807061, 9.19537175628226, 6.40025744530882,
6.79065950710589, 7.55982001444085, 6.32525461850926, 6.79589218583674,
6.27319142252109, 8.00001409367807, 7.20042489294496, 7.08799132928507,
4.64439089914137, 7.32369863137793, 6.88407715162756, 7.028201432058,
7.11110420296817, 5.36784342919665, 6.36199308533525, 7.03247714811858,
5.84161018045153, 7.15305163493748, 5.8124233184356, 7.48131422406393,
6.45024471398387, 5.6368283398591, 6.9203894167997, 7.14045304310116,
7.30572570532804, 6.76596127336425, 6.88775663247545, 6.24900952513952,
6.65897335548791, 6.68710860786651, 6.80350525760834, 6.8132247951359,
6.87233533375088, 6.95939851213398, 6.73221070646721, 6.23441072571837,
7.57267443808553, 6.1892902904379, 7.42326989223426, 5.6937321388027,
6.33947708046806), Upland = c(8.86669916625993, 9.32016590459317,
8.38585368057707, 6.47203712770295, 8.03956053500601, 6.92559519711047,
5.25749537202778, 6.19644412779452, 5.52772695944089, 8.86853393376427,
6.63287974057757, 5.62040086571715, 8.68977300671186, 6.34709728146827,
5.27592567623314, 8.74307584510495, 9.47784524698915, 7.63964228785801,
8.29269157549246, 8.62597071957453, 5.54842736609206, 6.11625997540442,
9.08557048502023, 6.97981012450491, 9.06338044328451, 6.49375383985169,
7.39960193615032, 7.88589341418237, 9.42586641215333, 7.72923285037454,
9.42910865144688, 7.81687752137768, 6.59327281858584, 8.78181132426947,
7.7548490369092, 8.75185868096011, 3.51154543883102, 4.21212759787848,
4.60350212888739, 3.14271446390264, 3.75731661566716, 3.33813924569502,
6.94937695367296, 4.41279829334063, 6.04973345523196, 5.47646355193151,
6.32364185944631, 5.09129319711371, 3.9982007016692, 5.42274494492309,
4.10429489307527, 4.15888308335967, 1.89711998488588, 2.41293315016291,
0.944461608840851, 2.11453286149111, 2.68881883917432, 3.67449071666184,
0, 3.22457384598284, 3.90801498403061, 3.8155121050473, 3.3322045101752,
4.12390336446365, 4.14709512760763, 3.87639582778499, 2.63905732961526,
4.04655389838575, 3.23474917402449, 3.69386699562498, 4.31748811353631,
4.92362391710663, 2.42774823594805, 5.23644196282995, 5.20125565370491,
3.97968165390196, 2.39789527279837, 4.62986279857846)), .Names = c("Animal",
"Year", "AllRoads", "Natural", "Upland"), row.names = c(1L,
2L, 5L, 6L, 9L, 10L, 11L, 12L, 15L, 16L, 19L, 20L, 23L, 24L,
27L, 28L, 31L, 32L, 33L, 34L, 37L, 38L, 39L, 40L, 43L, 44L, 47L,
48L, 49L, 50L, 51L, 52L, 53L, 54L, 55L, 56L, 59L, 60L, 61L, 62L,
65L, 66L, 69L, 70L, 71L, 72L, 73L, 74L, 75L, 76L, 77L, 78L, 81L,
82L, 83L, 84L, 89L, 90L, 97L, 98L, 99L, 100L, 105L, 106L, 107L,
108L, 109L, 110L, 111L, 112L, 113L, 114L, 115L, 116L, 117L, 118L,
119L, 120L), class = "data.frame")
``````

Re-arraigned dataframe

``````changed.foo<-structure(list(Year = structure(1:2, .Label = c("1", "2"), class ="  factor"),
A1 = c(10.949507, 10.873559), A2 = c(7.957597, 9.807648),
A3 = c(8.483067, 8.780634), A4 = c(8.501441, 8.392537), A5 = c(9.36474,
7.880696), A6 = c(6.029081, 6.770981), A7 = c(7.76959, 8.3734
), A8 = c(9.253181, 7.91613), A9 = c(4.94876, 5.099866),
A10 = c(7.8018, 8.017825), A11 = c(8.246303, 8.372591), A12 = c(8.073447,
9.05679), A13 = c(6.813445, 9.08764), A14 = c(7.61776, 8.2997
), A15 = c(4.593676, 4.930354), A16 = c(4.465908, 5.550742
), A17 = c(7.552062, 5.850285), A18 = c(6.719186, 7.787501
), A19 = c(8.502689, 8.86982), A20 = c(9.458762, 9.261366
), A21 = c(8.189892, 9.100507), A22 = c(9.188504, 9.760079
), A23 = c(7.573017, 8.268219), A24 = c(7.653779, 7.036676
), A25 = c(7.512618, 7.980708), A26 = c(7.042636, 7.444015
), A27 = c(7.181845, 6.965238), A28 = c(7.402452, 7.092811
), A29 = c(7.782867, 8.132119), A30 = c(6.655624, 7.856651
), A31 = c(7.812378, 8.038899), A32 = c(8.055539, 7.871616
), A33 = c(7.186523, 8.220739), A34 = c(8.13106, 7.895362
), A35 = c(8.066019, 7.929631), A36 = c(7.590726, 7.882409
), A37 = c(9.852159, 9.563412), A38 = c(9.511037, 8.748702
), A39 = c(9.455598, 8.872067), B1 = c(9.248695, 8.666647
), B2 = c(9.583131, 7.778044), B3 = c(8.121258, 9.317355),
B4 = c(7.591213, 8.298148), B5 = c(9.020442, 9.280133), B6 = c(9.351739,
8.630105), B7 = c(9.415605, 8.312176), B8 = c(8.982758, 9.37207
), B9 = c(9.138307, 8.410498), B10 = c(9.74481, 9.762689),
B11 = c(7.675855, 8.317888), B12 = c(9.124222, 7.418352),
B13 = c(8.947713, 7.125513), B14 = c(9.013129, 8.791511),
B15 = c(9.040958, 8.359135), B16 = c(9.042952, 8.267486),
B17 = c(9.190716, 6.862235), B18 = c(8.770639, 9.195372),
B19 = c(6.400257, 6.79066), B20 = c(7.55982, 6.325255), B21 = c(6.795892,
6.273191), B22 = c(8.000014, 7.200425), B23 = c(7.087991,
4.644391), B24 = c(7.323699, 6.884077), B25 = c(7.028201,
7.111104), B26 = c(5.367843, 6.361993), B27 = c(7.032477,
5.84161), B28 = c(7.153052, 5.812423), B29 = c(7.481314,
6.450245), B30 = c(5.636828, 6.920389), B31 = c(7.140453,
7.305726), B32 = c(6.765961, 6.887757), B33 = c(6.24901,
6.658973), B34 = c(6.687109, 6.803505), B35 = c(6.813225,
6.872335), B36 = c(6.959399, 6.732211), B37 = c(6.234411,
7.572674), B38 = c(6.18929, 7.42327), B39 = c(5.693732, 6.339477
), C1 = c(8.8666992, 9.320166), C2 = c(8.3858537, 6.472037
), C3 = c(8.0395605, 6.925595), C4 = c(5.2574954, 6.196444
), C5 = c(5.527727, 8.868534), C6 = c(6.6328797, 5.620401
), C7 = c(8.689773, 6.347097), C8 = c(5.2759257, 8.743076
), C9 = c(9.4778452, 7.639642), C10 = c(8.2926916, 8.625971
), C11 = c(5.5484274, 6.11626), C12 = c(9.0855705, 6.97981
), C13 = c(9.0633804, 6.493754), C14 = c(7.3996019, 7.885893
), C15 = c(9.4258664, 7.729233), C16 = c(9.4291087, 7.816878
), C17 = c(6.5932728, 8.781811), C18 = c(7.754849, 8.751859
), C19 = c(3.5115454, 4.212128), C20 = c(4.6035021, 3.142714
), C21 = c(3.7573166, 3.338139), C22 = c(6.949377, 4.412798
), C23 = c(6.0497335, 5.476464), C24 = c(6.3236419, 5.091293
), C25 = c(3.9982007, 5.422745), C26 = c(4.1042949, 4.158883
), C27 = c(1.89712, 2.412933), C28 = c(0.9444616, 2.114533
), C29 = c(2.6888188, 3.674491), C30 = c(0, 3.224574), C31 = c(3.908015,
3.815512), C32 = c(3.3322045, 4.123903), C33 = c(4.1470951,
3.876396), C34 = c(2.6390573, 4.046554), C35 = c(3.2347492,
3.693867), C36 = c(4.3174881, 4.923624), C37 = c(2.4277482,
5.236442), C38 = c(5.2012557, 3.979682), C39 = c(2.3978953,
4.629863)), .Names = c("Year", "A1", "A2", "A3", "A4", "A5",
"A6", "A7", "A8", "A9", "A10", "A11", "A12", "A13", "A14", "A15",
"A16", "A17", "A18", "A19", "A20", "A21", "A22", "A23", "A24",
"A25", "A26", "A27", "A28", "A29", "A30", "A31", "A32", "A33",
"A34", "A35", "A36", "A37", "A38", "A39", "B1", "B2", "B3", "B4",
"B5", "B6", "B7", "B8", "B9", "B10", "B11", "B12", "B13", "B14",
"B15", "B16", "B17", "B18", "B19", "B20", "B21", "B22", "B23",
"B24", "B25", "B26", "B27", "B28", "B29", "B30", "B31", "B32",
"B33", "B34", "B35", "B36", "B37", "B38", "B39", "C1", "C2",
"C3", "C4", "C5", "C6", "C7", "C8", "C9", "C10", "C11", "C12",
"C13", "C14", "C15", "C16", "C17", "C18", "C19", "C20", "C21",
"C22", "C23", "C24", "C25", "C26", "C27", "C28", "C29", "C30",
"C31", "C32", "C33", "C34", "C35", "C36", "C37", "C38", "C39"
), row.names = 1:2, class = "data.frame")
``````
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