<?xml version="1.0" encoding="UTF-8"?><!DOCTYPE article  PUBLIC "-//NLM//DTD Journal Publishing DTD v3.0 20080202//EN" "http://dtd.nlm.nih.gov/publishing/3.0/journalpublishing3.dtd"><article xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink" dtd-version="3.0" xml:lang="en" article-type="research article"><front><journal-meta><journal-id journal-id-type="publisher-id">OJAS</journal-id><journal-title-group><journal-title>Open Journal of Animal Sciences</journal-title></journal-title-group><issn pub-type="epub">2161-7597</issn><publisher><publisher-name>Scientific Research Publishing</publisher-name></publisher></journal-meta><article-meta><article-id pub-id-type="doi">10.4236/ojas.2014.44023</article-id><article-id pub-id-type="publisher-id">OJAS-48015</article-id><article-categories><subj-group subj-group-type="heading"><subject>Articles</subject></subj-group><subj-group subj-group-type="Discipline-v2"><subject>BIOMEDICAL &amp; LIFE SCIENCES</subject></subj-group></article-categories><title-group><article-title>Using Artificial Neural Network to Predict Body Weights of Rabbits</article-title></title-group><contrib-group><contrib contrib-type="author" xlink:type="simple"><name name-style="western"><surname>Emmanuel</surname><given-names>O. Salawu</given-names></name><xref ref-type="aff" rid="aff1"><sup>1</sup></xref><xref ref-type="corresp" rid="cor1"><sup>*</sup></xref></contrib><contrib contrib-type="author" xlink:type="simple"><name name-style="western"><surname>Musa</surname><given-names>Abdulraheem</given-names></name><xref ref-type="aff" rid="aff2"><sup>2</sup></xref></contrib><contrib contrib-type="author" xlink:type="simple"><name name-style="western"><surname>Ayoola</surname><given-names>Shoyombo</given-names></name><xref ref-type="aff" rid="aff3"><sup>3</sup></xref></contrib><contrib contrib-type="author" xlink:type="simple"><name name-style="western"><surname>Ayo</surname><given-names>Adepeju</given-names></name><xref ref-type="aff" rid="aff4"><sup>4</sup></xref></contrib><contrib contrib-type="author" xlink:type="simple"><name name-style="western"><surname>Sunday</surname><given-names>Davies</given-names></name><xref ref-type="aff" rid="aff5"><sup>5</sup></xref></contrib><contrib contrib-type="author" xlink:type="simple"><name name-style="western"><surname>Oludayo</surname><given-names>Akinsola</given-names></name><xref ref-type="aff" rid="aff3"><sup>3</sup></xref><xref ref-type="corresp" rid="cor1"><sup>*</sup></xref></contrib><contrib contrib-type="author" xlink:type="simple"><name name-style="western"><surname>Barthlomew</surname><given-names>Nwagu</given-names></name><xref ref-type="aff" rid="aff6"><sup>6</sup></xref></contrib></contrib-group><aff id="aff3"><addr-line>Department of Animal Science, Faculty of Agriculture, Ahmadu Bello University, Zaria, Nigeria</addr-line></aff><aff id="aff2"><addr-line>Department of Animal Science, Faculty of Agriculture, Kogi State University, Ayangba, Nigeria</addr-line></aff><aff id="aff1"><addr-line>Life Science College, National Tsing Hua University, Hsinchu, Taiwan</addr-line></aff><aff id="aff5"><addr-line>Institute of Ecology and Environmental Studies, Obafemi Awolowo University, Ife, Nigeria</addr-line></aff><aff id="aff6"><addr-line>National Animal Production Research Institute, Shika, Nigeria</addr-line></aff><aff id="aff4"><addr-line>Department of Mathematics, Lagos State University, Lagos, Nigeria</addr-line></aff><author-notes><corresp id="cor1">* E-mail:<email>emmanuel.s@iis.sinica.edu.tw(EOS)</email>;<email>dayoakinsola@gmail.com(OA)</email>;</corresp></author-notes><pub-date pub-type="epub"><day>08</day><month>07</month><year>2014</year></pub-date><volume>04</volume><issue>04</issue><fpage>182</fpage><lpage>186</lpage><history><date date-type="received"><day>12</day>	<month>May</month>	<year>2014</year></date><date date-type="rev-recd"><day>25</day>	<month>June</month>	<year>2014</year>	</date><date date-type="accepted"><day>9</day>	<month>July</month>	<year>2014</year></date></history><permissions><copyright-statement>&#169; Copyright  2014 by authors and Scientific Research Publishing Inc. </copyright-statement><copyright-year>2014</copyright-year><license><license-p>This work is licensed under the Creative Commons Attribution International License (CC BY). http://creativecommons.org/licenses/by/4.0/</license-p></license></permissions><abstract><p>In this (modest) study, we developed artificial neural network (ANN) models for predicting body weight using various independent (input) variables in eight-week old New Zealand white purebred and crossbred rabbits. From the whole data sets of similar age groups, 75 percent were used to train the neural network model and 25 percent were used to test the effectiveness of the model. Five predictor variables were used viz, breed, sex, heart girth, body length and height at wither as input variables and body weight was considered as dependent variable from the model. The ANN used was multilayer feed forward network with back propagation of error for efficient learning. Our ANN models (with &lt;i&gt;R&lt;/i&gt;&lt;sup&gt;2&lt;/sup&gt; = 0.68 at ten thousand iterations, and &lt;i&gt;R&lt;/i&gt;&lt;sup&gt;2&lt;/sup&gt; = 0.71 one million iterations) performed better than traditional multivariate linear regression (MLR) models (&lt;i&gt;R&lt;/i&gt;&lt;sup&gt;2&lt;/sup&gt; = 0.66) indicating that the ANN models were able to more accurately capture how the variations in input variables explained the variations in body weight. It is concluded that ANN models are more powerful than MLR models in predicting animals’ body weight. Nonetheless, we recognize that fitting an ANN model requires more computation resources than fitting a tradition MLR model but the benefits of its accuracy outweigh any demerit from the associated computation overhead.</p></abstract><kwd-group><kwd>Artificial Neural Network</kwd><kwd> New Zealand Rabbits</kwd><kwd> Multivariate Linear Regression</kwd></kwd-group></article-meta></front><body><sec id="s1"><title>1. Introduction</title><p>Traditional statistical prediction and classification methods (such as linear regression, logistic regression, principal component analysis, discriminant analysis, k-nearest neighbor classification, etc.) have a number of limitations (such as the assumptions upon which they are based [<xref ref-type="bibr" rid="scirp.48015-ref1">1</xref>] ) and results from them are often not the best possible. Artificial neural networks (ANNs), on the other hand, adapt to changes in non-restricted manners and are based on much fewer assumptions. ANNs provide a single tool for solving many problems in which traditionally statistical methods can or cannot provide acceptable solutions for. ANNs have been applied to a huge amount of fields in the past years [<xref ref-type="bibr" rid="scirp.48015-ref2">2</xref>] . However, the number of the use of ANNs is still few in animal science (and a number of other fields). This limited use of ANN in animal science is paradoxical as data analyses are often done in this field despite that a few studies [<xref ref-type="bibr" rid="scirp.48015-ref3">3</xref>] , etc. have shown ANNs to be more powerful than most traditional statistical prediction methods. Unlike traditional statistical methods, ANNs attempt to solve problems through explicit learning [<xref ref-type="bibr" rid="scirp.48015-ref4">4</xref>] [<xref ref-type="bibr" rid="scirp.48015-ref5">5</xref>] . This often makes it more computationally intensive. However, its strengths transcend this mild limitation and we were excited by the results we obtained from using ANN models in this study.</p></sec><sec id="s2"><title>2. Materials and Methods</title><sec id="s2_1"><title>2.1. Study Location and Experimental Animals</title><p>We used 144 F<sub>1</sub> eight-week-old rabbits (74 New Zealand White purebred and 70 New Zealand White &#215; California rabbits, crossbred in rabbit unit of National Animal Production Research Institute (NAPRI), Shika, Kaduna State, Nigeria) in this study. The animals were intensively managed under air conditioned building to minimize heat stress. They were fed a pelletized diet in the mornings and green grasses such as guinea grass (Panicum maximum) were given in the evenings.</p></sec><sec id="s2_2"><title>2.2. Body Parts Measured</title><p>Body weight was taken by digital weighing scale (Mettler Toledo, Top Pan Sensitive Balance, J. Liang Int. Ltd. UK). The measurements were taken while the animals were held in a standing position. Three biometric traits were determined using a tape measure on each animal. The anatomical reference points were in accordance with standard zoometrical procedures [<xref ref-type="bibr" rid="scirp.48015-ref6">6</xref>] . The body components measured were:</p><p>Body length (BL): Diagonal distance from the points of shoulder to points of hip or first thoracic vertebrae to base of tail or to hip bone. This is also described as the distance between the most cranial palpable spinosus process of the thoracic vertebrae and either sciatic tubers or distance between the tops of the pelvic bone.</p><p>Heart girth (HG): This refers to the body circumference and was measured just behind the fore-legs.</p><p>Height at withers (HW): This was taken using a graduated measuring stick.</p><p>All biometric traits were measured in centimetres.</p></sec><sec id="s2_3"><title>2.3. Forecasting/Prediction Model</title><p>We implemented a three-layer ANN with backpropagation in Python programming language (<xref ref-type="fig" rid="fig1">Figure 1</xref>). The input layer had five nodes—Breed, Sex, HG, BL, and HW; and the output layer had one node—body weight, while the hidden layer was made to contain five nodes (for simplicity and easy training of the model). We did not include age in the model since the animals were of the same age (8 weeks).</p><p>The entire dataset was randomly divided into two subset viz, the training set (consisting of 75 percent of the entire dataset) and testing subset (comprising of 25 percent of the entire dataset). The network was tested in 1 and 2 hidden layers with 3 to 25 neurons in each hidden layer. Initial weights and bias matrix were randomly initialized between −1 to 1. A nonlinear transformation (or activation) function tangent sigmoid (Equation (1)) were used to compute the output from summation of weighted inputs of neurons in each hidden layer. A pure linear transformation functions were used as output layer for getting network response.</p><disp-formula id="scirp.48015-formula23"><inline-graphic xmlns:xlink="http://www.w3.org/1999/xlink" xlink:href="http://file.scirp.org/Html/htmlimages\4-1400221x\58d304ae-94c7-4c53-9b20-72a87745961d.png"/></disp-formula><p>where, x is weighted sum of inputs and α = constant</p><fig id="fig1"><label>Figure 1</label><caption><p> Neural network showing input nodes (breed, sex, HG, BL, and HW) at the input layer, hidden nodes at the hidden layer, and output node (body weight) at the output layer</p></caption><graphic xmlns:xlink="http://www.w3.org/1999/xlink" xlink:href="http://file.scirp.org/Html/htmlimages\4-1400221x\45e49568-e542-4f2f-a39e-0d1e0337c735.png"/></fig><p>To have a fine training of the artificial neural network model, we set the learning rate to as low as 0.005 and the momentum factor to as low as 0.001. We first ran 10 thousand iterations of training, using the obtained model (i.e. the neural network weights) for predicting the body weights, and saved the results. For the sake of comparison, we fitted a multivariate linear regression (MLR) model (and made sure the model passed various model diagnoses such as normal distribution of regression residuals shown in <xref ref-type="fig" rid="fig1">Figure 1</xref>) after we confirmed that the model is statistically significant at p &lt; 0.0001 (see <xref ref-type="table" rid="table1">Table 1</xref>). We then compared the results from the artificial neural network with that of the fitted multivariate linear regression model. The results were encouraging. Therefore, we went further to run one million iterations of training to further improve the ANN’s weights. R<sup>2</sup> was determined using the following stated formula:</p><disp-formula id="scirp.48015-formula24"><inline-graphic xmlns:xlink="http://www.w3.org/1999/xlink" xlink:href="http://file.scirp.org/Html/htmlimages\4-1400221x\10e283e6-b4d8-4c65-b50a-aa7013acad17.png"/></disp-formula><p>Q<sub>exp</sub> = Observed value.</p><p>Q<sub>cal</sub> = Predicted value.</p><p>N = Number of observation.</p></sec></sec><sec id="s3"><title>3. Result and Discussions</title><p>We show the summary statistics of the observed weights and the predicted weights at ten thousand, and at one million training iterations of the ANN in <xref ref-type="table" rid="table1">Table 1</xref>. Exact figures (un-summarized statistics) are presented in <xref ref-type="table" rid="table2">Table 2</xref> in the supplementary material. Correlation (Pearson correlation) between the observed weights and the predicted weights at ten thousand, and at one million training iterations of the ANN are shown in <xref ref-type="table" rid="table2">Table 2</xref>; and correlation between the predicted weights at ten thousand, and the predicted weights at one million training iterations of the ANN are shown in <xref ref-type="table" rid="table3">Table 3</xref>.</p><p>Notably, our implemented artificial neural network (ANN) and the results are encouraging as it outperforms multivariate linear regression (MLR). The coefficient of determination (R<sup>2</sup>) from each of our ANN models’ results (0.679 for ten thousand iterations, <xref ref-type="fig" rid="fig2">Figure 2</xref>; and 0.71 from one million iterations, <xref ref-type="fig" rid="fig3">Figure 3</xref>) is much better than that from MLR (0.659, <xref ref-type="table" rid="table2">Table 2</xref>). The correlation between the observed and actual weights for ten thousand and one million iteration were positive and highly significant with both showing a similar value (r = 0.842), and correlation (r = 0.969, R<sup>2</sup> = 0.939) between ten thousand and one million iteration further make obvious that even the ANN model obtained from 10,000 iterations is also quite good in its performances. See <xref ref-type="table" rid="table2">Table 2</xref> and <xref ref-type="table" rid="table3">Table 3</xref>, and <xref ref-type="fig" rid="fig4">Figure 4</xref>. The prediction accuracy was validated using the test data sets. The ANN models gave higher R<sup>2</sup>-values than the multivariate linear regression indicating that the ANN model prediction was able to describe more variation in body weight of rabbits in comparison to the multivariate linear regression. The esti- mates of correlation between the observed and predicted weights for iterated values (ten thousand and one million) were positive and highly significant (p &lt; 0.001). Estimates obtained in this study correlate better (i.e. have higher prediction values) than those obtained in a similar study in India [<xref ref-type="bibr" rid="scirp.48015-ref7">7</xref>] .</p><fig id="fig2"><label>Figure 2</label><caption><p> ANN satisfactorily (R<sup>2</sup>= 0.679) predicted the observed weight after ten thousand training iterations</p></caption><graphic xmlns:xlink="http://www.w3.org/1999/xlink" xlink:href="http://file.scirp.org/Html/htmlimages\4-1400221x\b3930a2b-b379-427d-9bdb-6862d7fceb44.png"/></fig><fig id="fig3"><label>Figure 3</label><caption><p> This figure shows how well the ANN predicted the observed weight after one million training iterations. Note that the R<sup>2</sup>(0.71) shows an improvement over ten thousand training iterations (shown in Figure 2)</p></caption><graphic xmlns:xlink="http://www.w3.org/1999/xlink" xlink:href="http://file.scirp.org/Html/htmlimages\4-1400221x\a1a94da2-7fe3-45b5-9c17-a7dd9ae7cd30.png"/></fig><fig id="fig4"><label>Figure 4</label><caption><p> Relationship between the predictions from one million training iterations and the predictions from ten thousand training iterations. The high R<sup>2</sup>(0.939) suggests that ANN’s results are highly consistent and should be reliable</p></caption><graphic xmlns:xlink="http://www.w3.org/1999/xlink" xlink:href="http://file.scirp.org/Html/htmlimages\4-1400221x\1a7cfba7-16b0-47bb-9212-65df6ec9002f.png"/></fig><table-wrap id="table1"  position="float"><object-id pub-id-type="pii">Table 1</object-id><label>Table 1</label><caption><p>. Summary statistics of the observed weights and the predicted weights at ten thousand, and at one million training iterations of the ANN</p></caption><table><thead><tr><th align="center" valign="middle" ></th><th align="center" valign="middle" >Minimum</th><th align="center" valign="middle" >Maximum</th><th align="center" valign="middle" >Mean</th><th align="center" valign="middle" >Std. Deviation</th></tr></thead><tbody><tr><td align="center" valign="middle" >Observed Body Weight</td><td align="center" valign="middle" >470</td><td align="center" valign="middle" >1860</td><td align="center" valign="middle" >1313.25</td><td align="center" valign="middle" >285.628</td></tr><tr><td align="center" valign="middle" >Predicted Body Weight From ten thousand Iterations of ANN</td><td align="center" valign="middle" >379.097218</td><td align="center" valign="middle" >1613.263</td><td align="center" valign="middle" >1274.32910</td><td align="center" valign="middle" >240.5847255</td></tr><tr><td align="center" valign="middle" >Predicted Body Weight From million Iterations of ANN</td><td align="center" valign="middle" >426.691676</td><td align="center" valign="middle" >1658.181</td><td align="center" valign="middle" >1282.11313</td><td align="center" valign="middle" >254.5992157</td></tr></tbody></table></table-wrap><table-wrap id="table2"  position="float"><object-id pub-id-type="pii">Table 2</object-id><label>Table 2</label><caption><p>. Comparison of ANN (at ten thousand, and at one million training iterations) and MLR of the observed weights and predicted weights</p></caption><table><thead><tr><th align="center" valign="middle" ></th><th align="center" valign="middle" >MLR</th><th align="center" valign="middle" >ANN after 10,000 training iterations</th><th align="center" valign="middle" >ANN after 1,000,000 training iterations</th></tr></thead><tbody><tr><td align="center" valign="middle" >Coefficient of determination (R<sup>2</sup>)</td><td align="center" valign="middle" >0.659</td><td align="center" valign="middle" >0.679</td><td align="center" valign="middle" >0.710</td></tr><tr><td align="center" valign="middle" >Pearson correlation between  observed and predicted weights</td><td align="center" valign="middle" >0.812<sup>***</sup></td><td align="center" valign="middle" >0.824<sup>***</sup></td><td align="center" valign="middle" >0.843<sup>***</sup></td></tr><tr><td align="center" valign="middle" >Prediction sum of squares</td><td align="center" valign="middle" >5536677.167</td><td align="center" valign="middle" >5833084.503</td><td align="center" valign="middle" >6309725.164</td></tr></tbody></table></table-wrap><p><sup>***</sup>p &lt; 0.001.</p><table-wrap id="table3"  position="float"><object-id pub-id-type="pii">Table 3</object-id><label>Table 3</label><caption><p>. Pearson correlation between the predicted weights at ten thousand, and the predicted weights at one million training iterations of the ANN</p></caption><table><thead><tr><th align="center" valign="middle" ></th><th align="center" valign="middle" ></th><th align="center" valign="middle" >Predicted body weight from one million iterations of ANN</th></tr></thead><tbody><tr><td align="center" valign="middle"  rowspan="3"  >Predicted body  weight from ten  thousand iterations of ANN</td><td align="center" valign="middle" >Pearson correlation</td><td align="center" valign="middle" >0.969<sup>***</sup></td></tr><tr><td align="center" valign="middle" >Sum of squares and cross-products</td><td align="center" valign="middle" >6114879.253</td></tr><tr><td align="center" valign="middle" >Covariance</td><td align="center" valign="middle" >59367.760</td></tr></tbody></table></table-wrap><p><sup>***</sup>p &lt; 0.001.</p></sec><sec id="s4"><title>4. 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