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--- |
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language: |
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- ru |
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tags: |
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- sentiment analysis |
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- Russian |
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--- |
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## XLM-RoBERTa-Base-ru-sentiment-RuReviews |
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XLM-RoBERTa-Base-ru-sentiment-RuReviews is a [XLM-RoBERTa-Base](https://huggingface.co/xlm-roberta-base) model fine-tuned on [RuReviews dataset](https://github.com/sismetanin/rureviews) of Russian-language reviews from the ”Women’s Clothes and Accessories” product category on the primary e-commerce site in Russia. |
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<table> |
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<thead> |
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<tr> |
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<th rowspan="4">Model</th> |
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<th rowspan="4">Score<br></th> |
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<th rowspan="4">Rank</th> |
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<th colspan="12">Dataset</th> |
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</tr> |
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<tr> |
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<td colspan="6">SentiRuEval-2016<br></td> |
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<td colspan="2" rowspan="2">RuSentiment</td> |
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<td rowspan="2">KRND</td> |
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<td rowspan="2">LINIS Crowd</td> |
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<td rowspan="2">RuTweetCorp</td> |
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<td rowspan="2">RuReviews</td> |
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</tr> |
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<tr> |
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<td colspan="3">TC</td> |
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<td colspan="3">Banks</td> |
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</tr> |
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<tr> |
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<td>micro F1</td> |
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<td>macro F1</td> |
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<td>F1</td> |
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<td>micro F1</td> |
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<td>macro F1</td> |
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<td>F1</td> |
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<td>wighted</td> |
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<td>F1</td> |
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<td>F1</td> |
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<td>F1</td> |
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<td>F1</td> |
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<td>F1</td> |
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</tr> |
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</thead> |
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<tbody> |
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<tr> |
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<td>SOTA</td> |
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<td>n/s</td> |
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<td></td> |
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<td>76.71</td> |
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<td>66.40</td> |
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<td>70.68</td> |
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<td>67.51</td> |
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<td>69.53</td> |
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<td>74.06</td> |
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<td>78.50</td> |
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<td>n/s</td> |
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<td>73.63</td> |
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<td>60.51</td> |
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<td>83.68</td> |
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<td>77.44</td> |
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</tr> |
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<tr> |
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<td>XLM-RoBERTa-Large</td> |
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<td>76.37</td> |
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<td>1</td> |
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<td>82.26</td> |
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<td>76.36</td> |
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<td>79.42</td> |
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<td>76.35</td> |
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<td>76.08</td> |
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<td>80.89</td> |
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<td>78.31</td> |
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<td>75.27</td> |
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<td>75.17</td> |
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<td>60.03</td> |
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<td>88.91</td> |
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<td>78.81</td> |
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</tr> |
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<tr> |
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<td>SBERT-Large</td> |
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<td>75.43</td> |
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<td>2</td> |
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<td>78.40</td> |
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<td>71.36</td> |
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<td>75.14</td> |
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<td>72.39</td> |
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<td>71.87</td> |
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<td>77.72</td> |
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<td>78.58</td> |
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<td>75.85</td> |
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<td>74.20</td> |
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<td>60.64</td> |
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<td>88.66</td> |
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<td>77.41</td> |
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</tr> |
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<tr> |
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<td>MBARTRuSumGazeta</td> |
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<td>74.70</td> |
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<td>3</td> |
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<td>76.06</td> |
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<td>68.95</td> |
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<td>73.04</td> |
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<td>72.34</td> |
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<td>71.93</td> |
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<td>77.83</td> |
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<td>76.71</td> |
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<td>73.56</td> |
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<td>74.18</td> |
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<td>60.54</td> |
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<td>87.22</td> |
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<td>77.51</td> |
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</tr> |
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<tr> |
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<td>Conversational RuBERT</td> |
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<td>74.44</td> |
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<td>4</td> |
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<td>76.69</td> |
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<td>69.09</td> |
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<td>73.11</td> |
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<td>69.44</td> |
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<td>68.68</td> |
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<td>75.56</td> |
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<td>77.31</td> |
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<td>74.40</td> |
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<td>73.10</td> |
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<td>59.95</td> |
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<td>87.86</td> |
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<td>77.78</td> |
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</tr> |
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<tr> |
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<td>LaBSE</td> |
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<td>74.11</td> |
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<td>5</td> |
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<td>77.00</td> |
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<td>69.19</td> |
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<td>73.55</td> |
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<td>70.34</td> |
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<td>69.83</td> |
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<td>76.38</td> |
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<td>74.94</td> |
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<td>70.84</td> |
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<td>73.20</td> |
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<td>59.52</td> |
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<td>87.89</td> |
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<td>78.47</td> |
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</tr> |
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<tr> |
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<td>XLM-RoBERTa-Base</td> |
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<td>73.60</td> |
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<td>6</td> |
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<td>76.35</td> |
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<td>69.37</td> |
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<td>73.42</td> |
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<td>68.45</td> |
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<td>67.45</td> |
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<td>74.05</td> |
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<td>74.26</td> |
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<td>70.44</td> |
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<td>71.40</td> |
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<td>60.19</td> |
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<td>87.90</td> |
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<td>78.28</td> |
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</tr> |
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<tr> |
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<td>RuBERT</td> |
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<td>73.45</td> |
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<td>7</td> |
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<td>74.03</td> |
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<td>66.14</td> |
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<td>70.75</td> |
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<td>66.46</td> |
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<td>66.40</td> |
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<td>73.37</td> |
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<td>75.49</td> |
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<td>71.86</td> |
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<td>72.15</td> |
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<td>60.55</td> |
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<td>86.99</td> |
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<td>77.41</td> |
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</tr> |
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<tr> |
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<td>MBART-50-Large-Many-to-Many</td> |
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<td>73.15</td> |
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<td>8</td> |
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<td>75.38</td> |
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<td>67.81</td> |
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<td>72.26</td> |
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<td>67.13</td> |
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<td>66.97</td> |
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<td>73.85</td> |
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<td>74.78</td> |
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<td>70.98</td> |
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<td>71.98</td> |
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<td>59.20</td> |
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<td>87.05</td> |
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<td>77.24</td> |
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</tr> |
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<tr> |
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<td>SlavicBERT</td> |
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<td>71.96</td> |
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<td>9</td> |
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<td>71.45</td> |
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<td>63.03</td> |
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<td>68.44</td> |
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<td>64.32</td> |
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<td>63.99</td> |
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<td>71.31</td> |
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<td>72.13</td> |
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<td>67.57</td> |
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<td>72.54</td> |
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<td>58.70</td> |
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<td>86.43</td> |
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<td>77.16</td> |
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</tr> |
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<tr> |
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<td>EnRuDR-BERT</td> |
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<td>71.51</td> |
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<td>10</td> |
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<td>72.56</td> |
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<td>64.74</td> |
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<td>69.07</td> |
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<td>61.44</td> |
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<td>60.21</td> |
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<td>68.34</td> |
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<td>74.19</td> |
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<td>69.94</td> |
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<td>69.33</td> |
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<td>56.55</td> |
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<td>87.12</td> |
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<td>77.95</td> |
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</tr> |
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<tr> |
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<td>RuDR-BERT</td> |
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<td>71.14</td> |
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<td>11</td> |
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<td>72.79</td> |
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<td>64.23</td> |
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<td>68.36</td> |
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<td>61.86</td> |
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<td>60.92</td> |
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<td>68.48</td> |
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<td>74.65</td> |
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<td>70.63</td> |
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<td>68.74</td> |
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<td>54.45</td> |
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<td>87.04</td> |
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<td>77.91</td> |
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</tr> |
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<tr> |
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<td>MBART-50-Large</td> |
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<td>69.46</td> |
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<td>12</td> |
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<td>70.91</td> |
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<td>62.67</td> |
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<td>67.24</td> |
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<td>61.12</td> |
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<td>60.25</td> |
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<td>68.41</td> |
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<td>72.88</td> |
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<td>68.63</td> |
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<td>70.52</td> |
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<td>46.39</td> |
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<td>86.48</td> |
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<td>77.52</td> |
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</tr> |
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</tbody> |
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</table> |
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The table shows per-task scores and a macro-average of those scores to determine a models’s position on the leaderboard. For datasets with multiple evaluation metrics (e.g., macro F1 and weighted F1 for RuSentiment), we use an unweighted average of the metrics as the score for the task when computing the overall macro-average. The same strategy for comparing models’ results was applied in the GLUE benchmark. |
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## Citation |
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If you find this repository helpful, feel free to cite our publication: |
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``` |
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@article{Smetanin2021Deep, |
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author = {Sergey Smetanin and Mikhail Komarov}, |
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title = {Deep transfer learning baselines for sentiment analysis in Russian}, |
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journal = {Information Processing & Management}, |
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volume = {58}, |
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number = {3}, |
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pages = {102484}, |
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year = {2021}, |
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issn = {0306-4573}, |
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doi = {0.1016/j.ipm.2020.102484} |
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} |
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``` |
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Dataset: |
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``` |
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@INPROCEEDINGS{Smetanin2019Sentiment, |
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author={Sergey Smetanin and Michail Komarov}, |
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booktitle={2019 IEEE 21st Conference on Business Informatics (CBI)}, |
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title={Sentiment Analysis of Product Reviews in Russian using Convolutional Neural Networks}, |
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year={2019}, |
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volume={01}, |
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pages={482-486}, |
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doi={10.1109/CBI.2019.00062}, |
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ISSN={2378-1963}, |
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month={July} |
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} |
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``` |