Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'd like to average the data However, length of the data is different each other The number of data is seven How can i solve this problem by matlab?

x_1= 6.45805700000000 6.45805700000000 6.53780000000000 6.57767200000000 6.71722200000000 6.87670800000000 7.17574400000000 7.43490900000000 7.81368900000000 8.31208300000000 8.79054100000000 9.42848500000000 10.0066220000000 10.7442450000000 11.5018040000000 12.2992340000000 13.1166000000000 13.9140310000000 14.7313970000000 15.5088910000000 16.2465140000000 16.9243300000000 17.6220810000000 18.1204750000000 18.6587410000000 19.1571350000000 19.5159780000000 19.8947580000000 20.1937940000000 20.3732160000000 20.5526380000000 20.6523160000000 20.7719310000000 20.7719310000000 20.8118020000000 20.7519950000000 20.7320590000000 20.7121240000000 20.5725730000000 20.4330230000000 20.3333440000000 20.2735370000000 20.0343080000000 19.9146930000000 19.6754640000000 19.4362350000000 19.1770700000000 18.9577770000000 18.6388050000000 18.2799610000000 17.9011820000000 17.6021460000000 17.2233660000000 16.8645230000000 16.5256150000000 16.1069640000000 15.6883130000000 15.3892770000000 15.0503690000000 14.7114610000000 14.3924890000000 14.0735170000000 13.8542230000000 13.6947370000000 13.4355730000000 13.2960220000000 13.1564720000000 13.0567930000000 12.9770500000000 12.9571140000000 12.8375000000000 12.8175640000000 12.7776930000000 12.7577570000000 12.7178850000000 12.7178850000000 12.5982710000000 12.5982710000000 12.5583990000000 12.5783350000000 12.5384630000000 12.4188490000000 12.3789770000000 12.3191700000000 12.2593630000000 12.1796200000000 12.0799410000000 11.9802620000000 11.8606480000000 11.7809050000000 11.7011620000000 11.6612900000000 11.5018040000000 11.4818680000000 11.3622540000000 11.3622540000000 11.2625750000000 11.1828320000000 11.0831530000000 11.0233460000000 10.9236670000000 10.8439240000000 10.7442450000000 10.7043740000000 10.6046950000000 10.5249520000000 10.4850800000000 10.4053370000000 10.3255940000000 10.2458510000000 10.2259160000000 10.1063010000000 10.0664290000000 9.92687900000000 9.88700800000000 9.80726500000000 9.70758600000000 9.66771400000000 9.62784300000000 9.56803600000000 9.50822800000000 9.50822800000000 9.42848500000000 9.38861400000000 9.32880600000000 9.30887100000000 9.32880600000000 9.20919200000000 9.14938500000000 9.08957700000000 9.06964200000000 8.96996300000000 8.96996300000000 8.89022000000000 8.81047700000000 8.81047700000000 8.73073400000000 8.71079800000000 8.65099100000000 8.61111900000000 8.61111900000000 8.49150500000000 8.51144000000000 8.39182600000000 8.41176200000000 8.31208300000000 8.29214700000000 8.31208300000000 8.21240400000000 8.17253200000000 8.11272500000000 8.07285400000000 8.07285400000000 7.97317500000000 7.91336800000000 7.89343200000000 7.85356000000000 7.75388100000000 7.71401000000000 7.67413800000000 7.61433100000000 7.61433100000000 7.57446000000000 7.59439500000000 7.47478100000000 7.45484500000000 7.41497400000000 7.35516600000000 7.29535900000000 7.25548800000000 7.25548800000000 7.13587300000000 7.09600100000000 7.03619400000000 6.99632300000000 6.91658000000000 6.87670800000000 6.81690100000000 6.73715800000000 6.69728600000000 6.63747900000000 6.59760700000000 6.53780000000000 6.45805700000000 6.49792900000000 6.39825000000000 6.37831400000000 6.27863500000000 6.25870000000000 x_2 = 6.25870000000000 6.27863500000000 6.29857100000000 6.25870000000000 6.25870000000000 6.31850700000000 6.43812100000000 6.57767200000000 6.81690100000000 7.03619400000000 7.35516600000000 7.73394600000000 8.23234000000000 8.71079800000000 9.30887100000000 9.94681500000000 10.6046950000000 11.3024460000000 12.0201340000000 12.7178850000000 13.4754440000000 14.2130670000000 14.9307540000000 15.5088910000000 16.2066430000000 16.7449080000000 17.2632380000000 17.7416960000000 18.1603470000000 18.4992550000000 18.7384840000000 19.0175840000000 19.1770700000000 19.3564920000000 19.4561710000000 19.4761070000000 19.5558500000000 19.5359140000000 19.5359140000000 19.5159780000000 19.4960430000000 19.4561710000000 19.3963640000000 19.3166210000000 19.1371990000000 19.0375200000000 18.9179060000000 18.6786770000000 18.4793190000000 18.2400900000000 18.0207970000000 17.6619530000000 17.3629170000000 17.0040730000000 16.6452290000000 16.3461930000000 15.9275420000000 15.6285060000000 15.2297910000000 14.8908830000000 14.5918460000000 14.2928100000000 13.9937740000000 13.7346090000000 13.5352510000000 13.3358940000000 13.1166000000000 12.9969860000000 12.8375000000000 12.8175640000000 12.6780140000000 12.6381420000000 12.5384630000000 12.5185280000000 12.4985920000000 12.4985920000000 12.5384630000000 12.4587200000000 12.4387850000000 12.4387850000000 12.3989130000000 12.3789770000000 12.2792990000000 12.2593630000000 12.2194910000000 12.1596840000000 12.0600050000000 12.0001980000000 11.8805830000000 11.8606480000000 11.7609690000000 11.6612900000000 11.6214190000000 11.5018040000000 11.4220610000000 11.5217400000000 11.2625750000000 11.2426390000000 11.1429600000000 11.0632170000000 11.0034100000000 10.9037310000000 10.8638600000000 10.7841170000000 10.6844380000000 10.6046950000000 10.5249520000000 10.4452090000000 10.3654660000000 10.3056590000000 10.2458510000000 10.1860440000000 10.1262370000000 10.0464940000000 9.98668600000000 9.90694300000000 9.86707200000000 9.80726500000000 9.78732900000000 9.70758600000000 9.64777900000000 9.48829200000000 9.54810000000000 9.54810000000000 9.42848500000000 9.32880600000000 9.32880600000000 9.32880600000000 9.26899900000000 9.28893500000000 9.20919200000000 9.14938500000000 9.10951300000000 9.08957700000000 9.00983400000000 8.98989900000000 8.95002700000000 8.93009100000000 8.83041200000000 8.77060500000000 8.71079800000000 8.65099100000000 8.65099100000000 8.57124800000000 8.59118300000000 8.49150500000000 8.47156900000000 8.39182600000000 8.41176200000000 8.33201800000000 8.27221100000000 8.19246800000000 8.19246800000000 8.15259700000000 8.11272500000000 8.07285400000000 8.05291800000000 8.01304600000000 7.99311100000000 7.93330300000000 7.89343200000000 7.91336800000000 7.81368900000000 7.81368900000000 7.79375300000000 7.77381700000000 7.73394600000000 7.75388100000000 7.71401000000000 7.67413800000000 7.67413800000000 7.63426700000000 7.59439500000000 7.61433100000000 7.51465200000000 7.53458800000000 7.43490900000000 7.41497400000000 7.33523100000000 7.33523100000000 7.27542300000000 7.19568000000000 7.11593700000000 7.09600100000000 7.05613000000000 6.97638700000000 6.91658000000000 6.87670800000000 6.79696500000000 6.81690100000000 6.73715800000000 6.65741500000000 6.61754300000000 6.51786400000000 6.51786400000000 6.43812100000000 6.43812100000000 6.37831400000000 x_3=6.37831400000000 6.37831400000000 6.43812100000000 6.37831400000000 6.41818600000000 6.47799300000000 6.63747900000000 6.83683700000000 7.07606600000000 7.41497400000000 7.73394600000000 8.17253200000000 8.77060500000000 9.30887100000000 9.90694300000000 10.6046950000000 11.3423180000000 12.0799410000000 12.8773710000000 13.6548660000000 14.4124250000000 15.1899190000000 15.9076060000000 16.5854220000000 17.2034310000000 17.7616320000000 18.2799610000000 18.7185480000000 19.1371990000000 19.4561710000000 19.7352720000000 20.0343080000000 20.1738580000000 20.3532800000000 20.4130870000000 20.5725730000000 20.5725730000000 20.5327020000000 20.5925090000000 20.5127660000000 20.5127660000000 20.4330230000000 20.3134090000000 20.2336660000000 20.1140510000000 19.9545650000000 19.7751430000000 19.5957210000000 19.4362350000000 19.2169420000000 18.9179060000000 18.6587410000000 18.3597040000000 18.0606680000000 17.7815680000000 17.3828520000000 17.0040730000000 16.6452290000000 16.3063220000000 15.9474780000000 15.5886340000000 15.2895980000000 14.9706260000000 14.6715900000000 14.4722320000000 14.2130670000000 14.0535810000000 13.8342880000000 13.6548660000000 13.5352510000000 13.4555080000000 13.3757650000000 13.2561510000000 13.2362150000000 13.1764080000000 13.1564720000000 13.1365360000000 13.0966650000000 13.0767290000000 12.9969860000000 13.0368570000000 12.9770500000000 12.9172430000000 12.8773710000000 12.7976280000000 12.7577570000000 12.6979500000000 12.6182060000000 12.5185280000000 12.4587200000000 12.3391060000000 12.2194910000000 12.1596840000000 12.0600050000000 11.9603260000000 11.8606480000000 11.7809050000000 11.7210970000000 11.6014830000000 11.5217400000000 11.5018040000000 11.3423180000000 11.2227030000000 11.1429600000000 11.0632170000000 10.9635390000000 10.8638600000000 10.8239880000000 10.7043740000000 10.6046950000000 10.5249520000000 10.4452090000000 10.3854020000000 10.2857230000000 10.2059800000000 10.0863650000000 10.0863650000000 10.0464940000000 9.90694300000000 9.84713600000000 9.84713600000000 9.72752200000000 9.70758600000000 9.68765000000000 9.58797100000000 9.54810000000000 9.54810000000000 9.48829200000000 9.42848500000000 9.36867800000000 9.36867800000000 9.34874200000000 9.30887100000000 9.24906300000000 9.24906300000000 9.18925600000000 9.24906300000000 9.12944900000000 9.08957700000000 9.06964200000000 9.04970600000000 8.98989900000000 8.91015500000000 8.91015500000000 8.89022000000000 8.85034800000000 8.79054100000000 8.79054100000000 8.73073400000000 8.65099100000000 8.71079800000000 8.61111900000000 8.59118300000000 8.51144000000000 8.43169700000000 8.45163300000000 8.39182600000000 8.35195400000000 8.35195400000000 8.29214700000000 8.25227500000000 8.17253200000000 8.17253200000000 8.11272500000000 8.07285400000000 7.97317500000000 7.95323900000000 7.93330300000000 7.83362500000000 7.77381700000000 7.75388100000000 7.69407400000000 7.65420300000000 7.61433100000000 7.55452400000000 7.43490900000000 7.39503800000000 7.33523100000000 7.29535900000000 7.23555200000000 7.13587300000000 7.11593700000000 7.05613000000000 7.03619400000000 6.93651500000000 6.89664400000000 6.93651500000000 6.83683700000000 x_4=6.83683700000000 6.85677200000000 6.85677200000000 6.91658000000000 7.01625800000000 7.15580900000000 7.31529500000000 7.51465200000000 7.79375300000000 8.19246800000000 8.57124800000000 9.08957700000000 9.60790700000000 10.2657870000000 10.8638600000000 11.5416760000000 12.2992340000000 13.0368570000000 13.7944160000000 14.4921680000000 15.2098550000000 15.9076060000000 16.5854220000000 17.1834950000000 17.6619530000000 18.2201540000000 18.6587410000000 19.0574560000000 19.3764280000000 19.6754640000000 19.9146930000000 20.0941150000000 20.2336660000000 20.3333440000000 20.4330230000000 20.4330230000000 20.5127660000000 20.5327020000000 20.4330230000000 20.3532800000000 20.3134090000000 20.1539230000000 20.0741800000000 19.9545650000000 19.7751430000000 19.6156570000000 19.4362350000000 19.1970060000000 18.9976490000000 18.6786770000000 18.4394480000000 18.1404110000000 17.8015030000000 17.4625950000000 17.2034310000000 16.7648440000000 16.4458720000000 16.1269000000000 15.7879920000000 15.4889560000000 15.2497260000000 14.9905620000000 14.7712680000000 14.5320390000000 14.3725530000000 14.2529390000000 14.0535810000000 13.9937740000000 13.9140310000000 13.8940950000000 13.8542230000000 13.8143520000000 13.7944160000000 13.7944160000000 13.7545450000000 13.7744800000000 13.7545450000000 13.7545450000000 13.7146730000000 13.6947370000000 13.5751230000000 13.5551870000000 13.4754440000000 13.4355730000000 13.3558300000000 13.2162790000000 13.0966650000000 13.0567930000000 12.8574360000000 12.7577570000000 12.5982710000000 12.5185280000000 12.3789770000000 12.2194910000000 12.1198130000000 11.9802620000000 11.8805830000000 11.8407120000000 11.6812260000000 11.5018040000000 11.4419970000000 11.3423180000000 11.2426390000000 11.1429600000000 11.0432820000000 10.9236670000000 10.8040530000000 10.7442450000000 10.6445660000000 10.5249520000000 10.4252730000000 10.3654660000000 10.3255940000000 10.1860440000000 10.1063010000000 9.98668600000000 9.92687900000000 9.86707200000000 9.76739300000000 9.64777900000000 9.60790700000000 9.56803600000000 9.48829200000000 9.44842100000000 9.36867800000000 9.36867800000000 9.28893500000000 9.20919200000000 9.14938500000000 9.06964200000000 9.02977000000000 8.96996300000000 8.93009100000000 8.89022000000000 8.83041200000000 8.75066900000000 8.71079800000000 8.71079800000000 8.65099100000000 8.61111900000000 8.55131200000000 8.45163300000000 8.47156900000000 8.45163300000000 8.39182600000000 8.35195400000000 8.31208300000000 8.23234000000000 8.21240400000000 8.15259700000000 8.13266100000000 8.11272500000000 8.01304600000000 7.99311100000000 7.99311100000000 7.91336800000000 7.87349600000000 7.85356000000000 7.83362500000000 7.75388100000000 7.69407400000000 7.63426700000000 7.59439500000000 7.59439500000000 7.79375300000000 7.53458800000000 7.49471700000000 7.47478100000000 7.45484500000000 7.35516600000000 7.33523100000000 7.29535900000000 7.19568000000000 7.17574400000000 7.09600100000000 7.05613000000000 6.99632300000000 6.91658000000000 6.91658000000000 6.83683700000000 6.77702900000000 6.73715800000000 6.65741500000000 6.59760700000000 6.59760700000000 6.57767200000000 6.51786400000000 6.49792900000000 6.47799300000000 6.45805700000000 x_5=6.45805700000000 6.47799300000000 6.47799300000000 6.53780000000000 6.61754300000000 6.67735000000000 6.81690100000000 7.07606600000000 7.27542300000000 7.63426700000000 7.95323900000000 8.51144000000000 9.02977000000000 9.58797100000000 10.2259160000000 10.9236670000000 11.6214190000000 12.4188490000000 13.1365360000000 13.8741590000000 14.6516540000000 15.3294690000000 15.9873490000000 16.6252940000000 17.2233660000000 17.7416960000000 18.2002180000000 18.5191910000000 18.8979700000000 19.1970060000000 19.3564920000000 19.5159780000000 19.6754640000000 19.6754640000000 19.7552070000000 19.7552070000000 19.7950790000000 19.6754640000000 19.6355930000000 19.5558500000000 19.4561710000000 19.3365570000000 19.2368780000000 19.1371990000000 18.9378410000000 18.8182270000000 18.5989340000000 18.3995760000000 18.1802830000000 17.9011820000000 17.6619530000000 17.3629170000000 17.0439450000000 16.7050370000000 16.3461930000000 15.9275420000000 15.6085700000000 15.2895980000000 14.8908830000000 14.5719110000000 14.2529390000000 13.8741590000000 13.6947370000000 13.4953800000000 13.2162790000000 13.0966650000000 12.9571140000000 12.8375000000000 12.7378210000000 12.6182060000000 12.5783350000000 12.4985920000000 12.4786560000000 12.4786560000000 12.4786560000000 12.3789770000000 12.3989130000000 12.3789770000000 12.3789770000000 12.3391060000000 12.2792990000000 12.2792990000000 12.1995560000000 12.1796200000000 12.1596840000000 12.1198130000000 12.0001980000000 12.0001980000000 11.8805830000000 11.8008400000000 11.7809050000000 11.7210970000000 11.5616110000000 11.5217400000000 11.4818680000000 11.4220610000000 11.3423180000000 11.2625750000000 11.1429600000000 11.1030890000000 10.9635390000000 10.9436030000000 10.8439240000000 10.7442450000000 10.7043740000000 10.6445660000000 10.5648230000000 10.4850800000000 10.4252730000000 10.4651450000000 10.3056590000000 10.2259160000000 10.1860440000000 10.1063010000000 10.0265580000000 10.0066220000000 9.92687900000000 9.84713600000000 9.80726500000000 9.72752200000000 9.70758600000000 9.64777900000000 9.58797100000000 9.54810000000000 9.46835700000000 9.44842100000000 9.44842100000000 9.38861400000000 9.32880600000000 9.36867800000000 9.26899900000000 9.26899900000000 9.18925600000000 9.14938500000000 9.12944900000000 9.08957700000000 9.06964200000000 9.04970600000000 9.00983400000000 8.95002700000000 8.91015500000000 8.89022000000000 8.83041200000000 8.85034800000000 8.75066900000000 8.65099100000000 8.69086200000000 8.65099100000000 8.65099100000000 8.57124800000000 8.53137600000000 8.55131200000000 8.47156900000000 8.45163300000000 8.41176200000000 8.37189000000000 8.31208300000000 8.31208300000000 8.29214700000000 8.21240400000000 8.19246800000000 8.19246800000000 8.13266100000000 8.09278900000000 8.11272500000000 8.05291800000000 8.03298200000000 7.99311100000000 7.95323900000000 7.97317500000000 7.89343200000000 7.89343200000000 7.83362500000000 7.73394600000000 7.75388100000000 7.71401000000000 7.65420300000000 7.59439500000000 7.51465200000000 7.49471700000000 7.43490900000000 7.35516600000000 7.29535900000000 7.23555200000000 7.19568000000000 7.17574400000000 7.11593700000000 7.03619400000000 7.01625800000000 6.99632300000000 6.93651500000000 6.93651500000000 6.89664400000000 6.85677200000000 6.83683700000000 x_6=6.83683700000000 6.83683700000000 6.91658000000000 6.93651500000000 7.01625800000000 7.17574400000000 7.27542300000000 7.53458800000000 7.87349600000000 8.29214700000000 8.69086200000000 9.24906300000000 9.84713600000000 10.5050160000000 11.1828320000000 11.9005190000000 12.6580780000000 13.5352510000000 14.2130670000000 15.0304330000000 15.7481200000000 16.4458720000000 17.1236880000000 17.7416960000000 18.2600260000000 18.8182270000000 19.2368780000000 19.5757860000000 19.9545650000000 20.2336660000000 20.4529590000000 20.6523160000000 20.7519950000000 20.8317380000000 20.8716100000000 20.8716100000000 20.8915450000000 20.8516740000000 20.7918670000000 20.7320590000000 20.6722520000000 20.5725730000000 20.4728950000000 20.2934730000000 20.1140510000000 19.9944360000000 19.7950790000000 19.5757860000000 19.3166210000000 19.0973270000000 18.8182270000000 18.4992550000000 18.2002180000000 17.8812460000000 17.5224030000000 17.1635590000000 16.8246510000000 16.4857430000000 16.1069640000000 15.8477990000000 15.4690200000000 15.2098550000000 14.9506900000000 14.7114610000000 14.5121030000000 14.2928100000000 14.2130670000000 14.0336450000000 13.9539020000000 13.8741590000000 13.8143520000000 13.7545450000000 13.6548660000000 13.7545450000000 13.6349300000000 13.5950590000000 13.5551870000000 13.5153160000000 13.5153160000000 13.4555080000000 13.4156370000000 13.3757650000000 13.3159580000000 13.3159580000000 13.2561510000000 13.1963430000000 13.1166000000000 13.0767290000000 12.9770500000000 12.9172430000000 12.8574360000000 12.7776930000000 12.6780140000000 12.5982710000000 12.4985920000000 12.4786560000000 12.3590420000000 12.2593630000000 12.1596840000000 12.0400700000000 11.9603260000000 11.9204550000000 11.8207760000000 11.7410330000000 11.7011620000000 11.5815470000000 11.5217400000000 11.4220610000000 11.3622540000000 11.3223820000000 11.2227030000000 11.2027680000000 11.1828320000000 11.0632170000000 10.9834740000000 10.9436030000000 10.8638600000000 10.8239880000000 10.7641810000000 10.7043740000000 10.6445660000000 10.6645020000000 10.5448880000000 10.5249520000000 10.4452090000000 10.4252730000000 10.3455300000000 10.2857230000000 10.2259160000000 10.2458510000000 10.1461730000000 10.1262370000000 10.0464940000000 10.0066220000000 9.94681500000000 9.90694300000000 9.86707200000000 9.74745700000000 9.76739300000000 9.70758600000000 9.68765000000000 9.60790700000000 9.56803600000000 9.50822800000000 9.44842100000000 9.36867800000000 9.38861400000000 9.26899900000000 9.24906300000000 9.18925600000000 9.14938500000000 9.04970600000000 9.02977000000000 8.93009100000000 8.89022000000000 8.83041200000000 8.77060500000000 8.75066900000000 8.69086200000000 8.65099100000000 8.63105500000000 8.57124800000000 8.59118300000000 8.57124800000000 8.49150500000000 8.47156900000000 8.45163300000000 8.41176200000000 8.37189000000000 8.35195400000000 8.33201800000000 8.29214700000000 8.29214700000000 8.25227500000000 8.27221100000000 8.21240400000000 8.25227500000000 8.23234000000000 8.19246800000000 8.15259700000000 8.17253200000000 8.07285400000000 8.05291800000000 8.03298200000000 7.97317500000000 7.91336800000000 7.95323900000000 7.85356000000000 7.81368900000000 7.81368900000000 7.73394600000000 7.67413800000000 7.61433100000000 7.59439500000000 7.51465200000000 7.43490900000000 7.35516600000000 7.39503800000000 7.25548800000000 7.21561600000000 7.17574400000000 7.03619400000000 7.01625800000000 6.99632300000000 6.95645100000000 6.89664400000000 6.87670800000000 6.83683700000000 6.81690100000000 6.73715800000000 x_7=6.73715800000000 6.77702900000000 6.75709400000000 6.79696500000000 6.83683700000000 6.93651500000000 7.05613000000000 7.27542300000000 7.53458800000000 7.87349600000000 8.31208300000000 8.83041200000000 9.34874200000000 9.96675100000000 10.6645020000000 11.3821900000000 12.1397480000000 12.9571140000000 13.7744800000000 14.5719110000000 15.3294690000000 16.0670920000000 16.8047150000000 17.4825310000000 18.1204750000000 18.6986120000000 19.2169420000000 19.7153360000000 20.1140510000000 20.3931520000000 20.6523160000000 20.8915450000000 21.0510320000000 21.1706460000000 21.2703250000000 21.3899390000000 21.3500680000000 21.3500680000000 21.3301320000000 21.2503890000000 21.1706460000000 21.1706460000000 21.0310960000000 20.9114810000000 20.7519950000000 20.6523160000000 20.4728950000000 20.2536010000000 20.0941150000000 19.8548860000000 19.5757860000000 19.3365570000000 19.0175840000000 18.6786770000000 18.3597040000000 18.0008610000000 17.6619530000000 17.2632380000000 16.9243300000000 16.6851010000000 16.2465140000000 15.9873490000000 15.6484420000000 15.3892770000000 15.1699830000000 14.9307540000000 14.7712680000000 14.6117820000000 14.4323600000000 14.3725530000000 14.2529390000000 14.1333240000000 14.0735170000000 14.1133880000000 13.9738380000000 13.9539020000000 13.9339660000000 13.8542230000000 13.8940950000000 13.8741590000000 13.8542230000000 13.7944160000000 13.8143520000000 13.7744800000000 13.7146730000000 13.6548660000000 13.5551870000000 13.5153160000000 13.4156370000000 13.3757650000000 13.2960220000000 13.1365360000000 13.0368570000000 12.9571140000000 12.8574360000000 12.7378210000000 12.6979500000000 12.5583990000000 12.4786560000000 12.3989130000000 12.2992340000000 12.1596840000000 12.0998770000000 12.0400700000000 11.9403910000000 11.8407120000000 11.7210970000000 11.6612900000000 11.5416760000000 11.4818680000000 11.3821900000000 11.2825110000000 11.2625750000000 11.1628960000000 11.0632170000000 11.0632170000000 10.9635390000000 10.9037310000000 10.7841170000000 10.6844380000000 10.6645020000000 10.6046950000000 10.5050160000000 10.4850800000000 10.3854020000000 10.3455300000000 10.2657870000000 10.1661080000000 10.0863650000000 10.0863650000000 10.0265580000000 9.98668600000000 9.92687900000000 9.92687900000000 9.86707200000000 9.78732900000000 9.74745700000000 9.74745700000000 9.64777900000000 9.64777900000000 9.60790700000000 9.58797100000000 9.46835700000000 9.44842100000000 9.40854900000000 9.34874200000000 9.30887100000000 9.30887100000000 9.30887100000000 9.24906300000000 9.20919200000000 9.16932000000000 9.14938500000000 9.10951300000000 9.10951300000000 9.02977000000000 9.02977000000000 8.95002700000000 8.91015500000000 8.83041200000000 8.85034800000000 8.79054100000000 8.79054100000000 8.77060500000000 8.75066900000000 8.73073400000000 8.67092600000000 8.61111900000000 8.59118300000000 8.51144000000000 8.45163300000000 8.43169700000000 8.35195400000000 8.19246800000000 8.23234000000000 8.11272500000000 8.09278900000000 8.07285400000000 7.95323900000000 7.89343200000000 7.91336800000000 7.81368900000000 7.75388100000000 7.71401000000000 7.65420300000000 7.61433100000000 7.61433100000000 7.59439500000000 7.63426700000000 7.59439500000000 7.63426700000000 7.57446000000000

Length of the data array is different. I'd like to average this 7 data.

share|improve this question
5  
You need to give a small example of what you're talking about. For example, why doesn't mean(data) work? What is your data? matrix? a few different vectors? –  mathematical.coffee Feb 6 '12 at 2:58
2  
Oh my goodness, there is such thing as a small reproducible example, you know. Instead of wall of text. You could have easily have written x1 = [1 2 3]; x2 = [1 2]; x3 = [1 2 3 4]; ... to tell us what you meant. –  mathematical.coffee Feb 6 '12 at 4:32

2 Answers 2

up vote 1 down vote accepted

Use mean and just concatenate all your vectors:

mean([x1 x2 x3 x4 x5 x6 x7]);

If they're column vectors concatenate vertically:

mean([x1; x2; x3; x4; x5; x6; x7]);
share|improve this answer
    
My data array form is <189x1> <198x1>..... So mean function is not work TT. How can i change array form??? –  Sang Ho Choi Feb 6 '12 at 5:00
    
What exactly is your data then. A cell array?? 7 separate vectors?? –  mathematical.coffee Feb 6 '12 at 5:03
    
I think data is vector... x_1 <189x1 double> x_2 <198x1 double> x_3 <188x1 double> x_4 <190x1 double> x_5 <195x1 double> x_6 <210x1 double> x_7 <192x1 double> and data value metioned above –  Sang Ho Choi Feb 6 '12 at 5:10
    
Since they're column vectors you can concatenate vertically. See updated answer. –  mathematical.coffee Feb 6 '12 at 5:23
    
Oh I got it Thank you very much! –  Sang Ho Choi Feb 6 '12 at 5:27

If you need to find the mean of values which are stored in several vectors, first sum all the values of both vectors. Then use length() to find out how many entries are in each vector. Add the lengths and you will have the total number of entries. Then you can divide your sum total by the number of entries to get the mean. Exactly how you do this will depend on your data (how many vectors you have, whether you always have the same number).

So if your variables were a, b, c, d, e, f, g:

sumOfVectors = sum(a) + sum(b) + ... etc
numberOfItems = length(a) + length(b) + ... etc
averageAllData = sumOfVectors/numberOfItems

You could also potentially make this work for an arbitrary number of items by using a loop.

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.