premise
stringlengths
11
296
hypothesis
stringlengths
11
296
label
stringclasses
1 value
idx
int32
0
1.1k
__hfsplit__
stringclasses
1 value
__rowid__
stringlengths
32
32
They then use a discriminative model to rerank the translation output using additional nonworld level features.
They then use a generative model to rerank the translation output using additional nonworld level features.
contradiction
900
test
deb85ea446eb4b0883c66ea3e5bc95f2
They then use a generative model to rerank the translation output using additional nonworld level features.
They then use a discriminative model to rerank the translation output using additional nonworld level features.
contradiction
901
test
e4515fbac5934f0da19d6162c802a8d0
In contrast to standard MT tasks, we are dealing with a relatively low-resource setting where the sparseness of the target vocabulary is an issue.
Unlike in standard MT tasks, we are dealing with a relatively low-resource setting where the sparseness of the target vocabulary is an issue.
contradiction
902
test
c83e65501cf644e39d2206ec46418cfe
Unlike in standard MT tasks, we are dealing with a relatively low-resource setting where the sparseness of the target vocabulary is an issue.
In contrast to standard MT tasks, we are dealing with a relatively low-resource setting where the sparseness of the target vocabulary is an issue.
contradiction
903
test
255996e542cb44e5bfc357474151fbc3
A distribution is then computed over these actions using a softmax function and particular actions are chosen accordingly during training and decoding.
Logits are then computed for these actions and particular actions are chosen according to a softmax over these logits during training and decoding.
contradiction
904
test
544676d32a0a4418beb1fb48d5a8a0d1
Logits are then computed for these actions and particular actions are chosen according to a softmax over these logits during training and decoding.
A distribution is then computed over these actions using a softmax function and particular actions are chosen accordingly during training and decoding.
contradiction
905
test
98f82d6a9dc64ebd865d98c5f064f4db
A distribution is then computed over these actions using a softmax function and particular actions are chosen accordingly during training and decoding.
A distribution is then computed over these actions using a maximum-entropy approach and particular actions are chosen accordingly during training and decoding.
contradiction
906
test
cfc64eedd777493fb9041e6f80990c17
A distribution is then computed over these actions using a maximum-entropy approach and particular actions are chosen accordingly during training and decoding.
A distribution is then computed over these actions using a softmax function and particular actions are chosen accordingly during training and decoding.
contradiction
907
test
7dd2c1ca0130452d82c652ce9ec20b64
A distribution is then computed over these actions using a softmax function and particular actions are chosen accordingly during training and decoding.
A distribution is then computed over these actions using a softmax function and particular actions are chosen randomly during training and decoding.
contradiction
908
test
eccc1b3d682c48c5a991098fb549e7e1
A distribution is then computed over these actions using a softmax function and particular actions are chosen randomly during training and decoding.
A distribution is then computed over these actions using a softmax function and particular actions are chosen accordingly during training and decoding.
contradiction
909
test
ed511806181c470d899185e2c5477225
The systems thus produced are incremental: dialogues are processed word-by-word, shown previously to be essential in supporting natural, spontaneous dialogue.
The systems thus produced support the capability to interrupt an interlocutor mid-sentence.
contradiction
910
test
1f161d32427244ff8aa78b6de7807af5
The systems thus produced support the capability to interrupt an interlocutor mid-sentence.
The systems thus produced are incremental: dialogues are processed word-by-word, shown previously to be essential in supporting natural, spontaneous dialogue.
contradiction
911
test
f57136998c464a0192fadc9d6449aad2
The systems thus produced are incremental: dialogues are processed word-by-word, shown previously to be essential in supporting natural, spontaneous dialogue.
The systems thus produced are incremental: dialogues are processed sentence-by-sentence, shown previously to be essential in supporting natural, spontaneous dialogue.
contradiction
912
test
e7db3352954e44398a241dde1325aa56
The systems thus produced are incremental: dialogues are processed sentence-by-sentence, shown previously to be essential in supporting natural, spontaneous dialogue.
The systems thus produced are incremental: dialogues are processed word-by-word, shown previously to be essential in supporting natural, spontaneous dialogue.
contradiction
913
test
17162aaf68b14b5bb3c58d611ca68190
Indeed, it is often stated that for humans to learn how to perform adequately in a domain, one example is enough from which to learn.
Indeed, it is often stated that for humans to learn how to perform adequately in a domain, one-shot learning is sufficient.
contradiction
914
test
42548cd8208848b2879ea21ead74ba53
Indeed, it is often stated that for humans to learn how to perform adequately in a domain, one-shot learning is sufficient.
Indeed, it is often stated that for humans to learn how to perform adequately in a domain, one example is enough from which to learn.
contradiction
915
test
d36cc51c666d48d5987768a7b2ac34ea
Indeed, it is often stated that for humans to learn how to perform adequately in a domain, one example is enough from which to learn.
Indeed, it is often stated that for humans to learn how to perform adequately in a domain, any number of examples is enough from which to learn.
contradiction
916
test
3fe2da3ead7f4216b3e5e5e80ab4960a
Indeed, it is often stated that for humans to learn how to perform adequately in a domain, any number of examples is enough from which to learn.
Indeed, it is often stated that for humans to learn how to perform adequately in a domain, one example is enough from which to learn.
contradiction
917
test
a901fca826a0440e9650c281b9a026e8
We investigate a wide range of metrics, including state-of-the-art word-based and novel grammar-based ones, and demonstrate that they only weakly reflect human judgements of system outputs as generated by data-driven, end-to-end NLG.
We investigate a wide range of metrics, including state-of-the-art word-based and novel grammar-based ones, and demonstrate that they only weakly reflect human judgements of system outputs as generated by data-driven, end-to-end natural language generation.
contradiction
918
test
46d7f3de032c45f4be5d30d927ccea21
We investigate a wide range of metrics, including state-of-the-art word-based and novel grammar-based ones, and demonstrate that they only weakly reflect human judgements of system outputs as generated by data-driven, end-to-end natural language generation.
We investigate a wide range of metrics, including state-of-the-art word-based and novel grammar-based ones, and demonstrate that they only weakly reflect human judgements of system outputs as generated by data-driven, end-to-end NLG.
contradiction
919
test
dc2d3952d86f473d81f34a7840439bb0
We investigate a wide range of metrics, including state-of-the-art word-based and novel grammar-based ones, and demonstrate that they only weakly reflect human judgements of system outputs as generated by data-driven, end-to-end NLG.
We investigate a wide range of metrics, including state-of-the-art word-based and novel grammar-based ones, and demonstrate that they only weakly reflect human judgements of system outputs as generated by data-driven, end-to-end natural language parsing.
contradiction
920
test
30fb2f7517324c3dbec3063aa5815a32
We investigate a wide range of metrics, including state-of-the-art word-based and novel grammar-based ones, and demonstrate that they only weakly reflect human judgements of system outputs as generated by data-driven, end-to-end natural language parsing.
We investigate a wide range of metrics, including state-of-the-art word-based and novel grammar-based ones, and demonstrate that they only weakly reflect human judgements of system outputs as generated by data-driven, end-to-end NLG.
contradiction
921
test
d876a7574e5a426ea7ed4db3a4acb734
To assess the reliability of ratings, we calculated the intra-class correlation coefficient (ICC), which measures inter-observer reliability on ordinal data for more than two raters (Landis and Koch, 1977).
To assess the unreliability of ratings, we calculated the intra-class correlation coefficient (ICC), which measures inter-observer reliability on ordinal data for more than two raters (Landis and Koch, 1977).
contradiction
922
test
653ca7aceb004bb59a3fa2b1423fa5b5
To assess the unreliability of ratings, we calculated the intra-class correlation coefficient (ICC), which measures inter-observer reliability on ordinal data for more than two raters (Landis and Koch, 1977).
To assess the reliability of ratings, we calculated the intra-class correlation coefficient (ICC), which measures inter-observer reliability on ordinal data for more than two raters (Landis and Koch, 1977).
contradiction
923
test
0c733a24e1a546c99688636fc299e928
We also show that metric performance is data- and system-specific.
We also show that metric performance varies between datasets and systems.
contradiction
924
test
6f299a2c6be44ed3a74b5b5c51c7ca3f
We also show that metric performance varies between datasets and systems.
We also show that metric performance is data- and system-specific.
contradiction
925
test
5547bfe3b5c241e5b832b62d40a49e23
We also show that metric performance is data- and system-specific.
We also show that metric performance is constant between datasets and systems.
contradiction
926
test
6ec60eb8195541a3b133f1bd52079efb
We also show that metric performance is constant between datasets and systems.
We also show that metric performance is data- and system-specific.
contradiction
927
test
191078cc971e4483b2f59d8b47e8a0d1
Our experiments indicate that neural systems are quite good at producing fluent outputs and generally score well on standard word-match metrics, but perform quite poorly at content selection and at capturing long-term structure.
Our experiments indicate that neural systems are quite good at surface-level language modeling, but perform quite poorly at capturing higher level semantics and structure.
contradiction
928
test
928936dedf864717bd13e70e9922d053
Our experiments indicate that neural systems are quite good at surface-level language modeling, but perform quite poorly at capturing higher level semantics and structure.
Our experiments indicate that neural systems are quite good at producing fluent outputs and generally score well on standard word-match metrics, but perform quite poorly at content selection and at capturing long-term structure.
contradiction
929
test
a8dfa3931e064621a154a50a783328a9
Our experiments indicate that neural systems are quite good at producing fluent outputs and generally score well on standard word-match metrics, but perform quite poorly at content selection and at capturing long-term structure.
Our experiments indicate that neural systems are quite good at capturing higher level semantics and structure but perform quite poorly at surface-level language modeling.
contradiction
930
test
f2fec3213a7b48d29eea95b92434b508
Our experiments indicate that neural systems are quite good at capturing higher level semantics and structure but perform quite poorly at surface-level language modeling.
Our experiments indicate that neural systems are quite good at producing fluent outputs and generally score well on standard word-match metrics, but perform quite poorly at content selection and at capturing long-term structure.
contradiction
931
test
93ab4b1ffb5f40d9824bd109f5858e1d
Reconstruction-based techniques can also be applied at the document or sentence-level during training.
Reconstruction-based techniques can operate on multiple scales during training.
contradiction
932
test
f6727046658441df928c8e2a356c331e
Reconstruction-based techniques can operate on multiple scales during training.
Reconstruction-based techniques can also be applied at the document or sentence-level during training.
contradiction
933
test
45743ddb3ae6474e8124d31f5113ea64
Reconstruction-based techniques can also be applied at the document or sentence-level during training.
Reconstruction-based techniques can also be applied at the document or sentence-level during test.
contradiction
934
test
6f80ac8ec9e24d0d828dcf206ba5b531
Reconstruction-based techniques can also be applied at the document or sentence-level during test.
Reconstruction-based techniques can also be applied at the document or sentence-level during training.
contradiction
935
test
886527f0def940878dc4d4a011ec9d84
Reconstruction-based techniques can also be applied at the document or sentence-level during training.
Reconstruction-based techniques can only be applied at the sentence-level during training.
contradiction
936
test
76344cddb0a2466c875ba1491260d5eb
Reconstruction-based techniques can only be applied at the sentence-level during training.
Reconstruction-based techniques can also be applied at the document or sentence-level during training.
contradiction
937
test
f153718e4e0d431d8a105871ab94a3b1
In practice, our proposed extractive evaluation will pick up on many errors in this passage.
In practice, our proposed extractive evaluation will pick up on few errors in this passage.
contradiction
938
test
a0a4671f1d4543289d695bfff03744ef
In practice, our proposed extractive evaluation will pick up on few errors in this passage.
In practice, our proposed extractive evaluation will pick up on many errors in this passage.
contradiction
939
test
9a9a9290c710447788a7860265df87a2
Similarly, the use of more agent-empowering verbs in female narratives decrease the odds of passing the Bechdel test.
Similarly, the use of more agent-empowering verbs in female narratives decrease the odds of two named women characters talking about something besides men.
contradiction
940
test
435a7d32132b462eb948b07566efb22a
Similarly, the use of more agent-empowering verbs in female narratives decrease the odds of two named women characters talking about something besides men.
Similarly, the use of more agent-empowering verbs in female narratives decrease the odds of passing the Bechdel test.
contradiction
941
test
148d07186395440585f44f197d136006
Similarly, the use of more agent-empowering verbs in female narratives decrease the odds of passing the Bechdel test.
Similarly, the use of more agent-empowering verbs in female narratives decrease the odds of men in the narrative talking to each other about women.
contradiction
942
test
1bc49ce5020b45a7b2e4b022e0d24d8a
Similarly, the use of more agent-empowering verbs in female narratives decrease the odds of men in the narrative talking to each other about women.
Similarly, the use of more agent-empowering verbs in female narratives decrease the odds of passing the Bechdel test.
contradiction
943
test
f7cb117f63414c138a0977825c013e06
Furthermore, male characters use inhibitory language more (inhib), which contains words pertaining to blocking or allowing, suggesting that these characters are in positions of power.
Furthermore, male characters use inhibitory language more (inhib), which contains words pertaining to blocking or allowing, suggesting that these characters are more often in positions where they can forbid or permit actions and decisions.
contradiction
944
test
a4eb71c0d34a48c68695ec7f49c70d13
Furthermore, male characters use inhibitory language more (inhib), which contains words pertaining to blocking or allowing, suggesting that these characters are more often in positions where they can forbid or permit actions and decisions.
Furthermore, male characters use inhibitory language more (inhib), which contains words pertaining to blocking or allowing, suggesting that these characters are in positions of power.
contradiction
945
test
0cf152858c71442bbbf181b3ed3034c6
Furthermore, male characters use inhibitory language more (inhib), which contains words pertaining to blocking or allowing, suggesting that these characters are in positions of power.
Furthermore, male characters use inhibitory language more (inhib), which contains words pertaining to blocking or allowing, suggesting that these characters are more often in positions where they are blocked or allowed to do things by others.
contradiction
946
test
8d309d8a7ee84bc5afcd2157b96f8777
Furthermore, male characters use inhibitory language more (inhib), which contains words pertaining to blocking or allowing, suggesting that these characters are more often in positions where they are blocked or allowed to do things by others.
Furthermore, male characters use inhibitory language more (inhib), which contains words pertaining to blocking or allowing, suggesting that these characters are in positions of power.
contradiction
947
test
5777f51cd0cc426f889bb2745c4af744
Furthermore, male characters use inhibitory language more (inhib), which contains words pertaining to blocking or allowing, suggesting that these characters are in positions of power.
Furthermore, male characters use inhibitory language more (inhib), which contains words pertaining to blocking or allowing, suggesting that these characters are in positions of low power.
contradiction
948
test
02f0235987944216aad3d97ef1cd986b
Furthermore, male characters use inhibitory language more (inhib), which contains words pertaining to blocking or allowing, suggesting that these characters are in positions of low power.
Furthermore, male characters use inhibitory language more (inhib), which contains words pertaining to blocking or allowing, suggesting that these characters are in positions of power.
contradiction
949
test
7fb4c953045f4948ac8ef6cfde4da3ec
Looking at pictures online of people trying to take photos of mirrors they want to sell is my new thing...
Looking at pictures online of people trying to take photos of mirrors is my new thing...
contradiction
950
test
86c6ea43171f46d5b38c7f4aabbeb34e
Looking at pictures online of people trying to take photos of mirrors is my new thing...
Looking at pictures online of people trying to take photos of mirrors they want to sell is my new thing...
contradiction
951
test
dd7db269b96a42ac81ddd6efbbb3ff31
A serene wind rolled across the glade.
A tempestuous wind rolled across the glade.
contradiction
952
test
00cab9cea4e34f3880529c37459db3b0
A tempestuous wind rolled across the glade.
A serene wind rolled across the glade.
contradiction
953
test
eddb95b5ff2a4a9ab4a60faa913422d3
A serene wind rolled across the glade.
An easterly wind rolled across the glade.
contradiction
954
test
1d16b98c33854a64ab3f769377268ceb
An easterly wind rolled across the glade.
A serene wind rolled across the glade.
contradiction
955
test
6779973b64904882b5424aaebfb4e5f5
A serene wind rolled across the glade.
A calm wind rolled across the glade.
contradiction
956
test
47ee93abac2947449690e2e7ea3a8fa3
A calm wind rolled across the glade.
A serene wind rolled across the glade.
contradiction
957
test
137f19e33bcb4b90bc8a83105a3b8771
A serene wind rolled across the glade.
A wind rolled across the glade.
contradiction
958
test
f11488b857614da9bfbea1430e8517f7
A wind rolled across the glade.
A serene wind rolled across the glade.
contradiction
959
test
ed919e2a4fbe4129a6c42bf5a90054a8
The reaction was strongly exothermic.
The reaction media got very hot.
contradiction
960
test
55c7ecd28f6243caa0c0f37022073a69
The reaction media got very hot.
The reaction was strongly exothermic.
contradiction
961
test
5de36bfce52647cc9811de3669dce1e8
The reaction was strongly exothermic.
The reaction media got very cold.
contradiction
962
test
4816ea64ce3d46a0afe80bb266a60cb4
The reaction media got very cold.
The reaction was strongly exothermic.
contradiction
963
test
ed3df88bb2b441c6808f227b908b8103
The reaction was strongly endothermic.
The reaction media got very hot.
contradiction
964
test
f502c607a6dd4e76a50cf6cd6957e93f
The reaction media got very hot.
The reaction was strongly endothermic.
contradiction
965
test
91fbaf18268c44c4bac069b27b87e9a0
The reaction was strongly endothermic.
The reaction media got very cold.
contradiction
966
test
e25d5913d3a14e62b7b5e80de7ae21c7
The reaction media got very cold.
The reaction was strongly endothermic.
contradiction
967
test
4b57b3ca43db4331b36cfce0689b187d
She didn't think I had already finished it, but I had.
I had already finished it.
contradiction
968
test
257902835739410f82f0286b1f31fb08
I had already finished it.
She didn't think I had already finished it, but I had.
contradiction
969
test
ec79c92493a344cab536cd78694b455e
She didn't think I had already finished it, but I had.
I hadn't already finished it.
contradiction
970
test
ec5ae104606f4230aa2dcba706548f51
I hadn't already finished it.
She didn't think I had already finished it, but I had.
contradiction
971
test
465b83d24c304278957d5c3c1ecfd256
She thought I had already finished it, but I hadn't.
I had already finished it.
contradiction
972
test
d65118d9fce249238bd44f15108bb53e
I had already finished it.
She thought I had already finished it, but I hadn't.
contradiction
973
test
26d7396957e9409699e432c4cf74e6c9
She thought I had already finished it, but I hadn't.
I hadn't already finished it.
contradiction
974
test
d38f93922c664f7a8b54c1bd166e97ff
I hadn't already finished it.
She thought I had already finished it, but I hadn't.
contradiction
975
test
8e24de62a7b0407c8035e94c5962259a
Temple said that the business was facing difficulties, but didn't make any specific claims.
Temple didn't make any specific claims.
contradiction
976
test
29af76524cda4156a7085935f740bd6d
Temple didn't make any specific claims.
Temple said that the business was facing difficulties, but didn't make any specific claims.
contradiction
977
test
9a695b2edabf4cc797b66f7d6c18d101
Temple said that the business was facing difficulties, but didn't make any specific claims.
The business didn't make any specific claims.
contradiction
978
test
e3e87be966234cf8902585fcd790e2f7
The business didn't make any specific claims.
Temple said that the business was facing difficulties, but didn't make any specific claims.
contradiction
979
test
38683685a3414f99b7ab6e7b7b8ad7af
Temple said that the business was facing difficulties, but didn't have a chance of going into the red.
Temple didn't have a chance of going into the red.
contradiction
980
test
c36b9d60a5e349de8c0b0fbb1a853c8c
Temple didn't have a chance of going into the red.
Temple said that the business was facing difficulties, but didn't have a chance of going into the red.
contradiction
981
test
3e9fd86d57f743baadd165c2cd014581
Temple said that the business was facing difficulties, but didn't have a chance of going into the red.
Temple said the business didn't have a chance of going into the red.
contradiction
982
test
76d4d0093060406fa2eaeae9a126176f
Temple said the business didn't have a chance of going into the red.
Temple said that the business was facing difficulties, but didn't have a chance of going into the red.
contradiction
983
test
50b81e4c7f734dbfa234c5cb09725794
The profits of the businesses that focused on branding were still negative.
The businesses that focused on branding still had negative profits.
contradiction
984
test
d0c12a2adebe4afab2f3851b706162d1
The businesses that focused on branding still had negative profits.
The profits of the businesses that focused on branding were still negative.
contradiction
985
test
ec52eb397ce84d968d3d5aa3ff738b5b
The profits of the business that was most successful were still negative.
The profits that focused on branding were still negative.
contradiction
986
test
19458cb1e7464a3eaeefd3244ba5337f
The profits that focused on branding were still negative.
The profits of the business that was most successful were still negative.
contradiction
987
test
6775b67b8cf24bacb1aba64e3fd0f533
The profits of the businesses that were highest this quarter were still negative.
The businesses that were highest this quarter still had negative profits.
contradiction
988
test
d284774765b8440a98099499ad85a19f
The businesses that were highest this quarter still had negative profits.
The profits of the businesses that were highest this quarter were still negative.
contradiction
989
test
fc0cfb74827b4299b7d54738718e9870
The profits of the businesses that were highest this quarter were still negative.
For the businesses, the profits that were highest were still negative.
contradiction
990
test
f2761691f70b4627b6ab3edd769028d4
For the businesses, the profits that were highest were still negative.
The profits of the businesses that were highest this quarter were still negative.
contradiction
991
test
7220d8e2f45e4638bf59bd3d6b6513db
I baked him a cake.
I baked him.
contradiction
992
test
855c8ec69c604b7486b98ccc774c1333
I baked him.
I baked him a cake.
contradiction
993
test
619e0f09d6ff4f9ea8b8e413f7ce9117
I baked him a cake.
I baked a cake for him.
contradiction
994
test
d84b3817ad1e4313ac08d2c25f299526
I baked a cake for him.
I baked him a cake.
contradiction
995
test
f9b3d687ea724f77a4c0b7ebb8cfab38
I gave him a note.
I gave a note to him.
contradiction
996
test
26566e4ef45e46eb9056be7ecf505881
I gave a note to him.
I gave him a note.
contradiction
997
test
08878cff469149bbbae704ac440e8919
Jake broke the vase.
The vase broke.
contradiction
998
test
2244ad3c0dde49f7a7482bb9552798bc
The vase broke.
Jake broke the vase.
contradiction
999
test
3990beaa79354314b3cba209a72bcef0