Comments by "LW1zFog" (@lw1zfog) on "NBC News" channel.

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  351. The Rand Corp prides itself on having contributed to the elaboration of the long-term strategy which enabled the United States to win the Cold War, by forcing the Soviet Union to consume its own economic resources in the strategic confrontation. It is this model which was the inspiration for the new plan, Overextending and Unbalancing Russia , published by Rand [1]. According to their analysts, Russia remains a powerful adversary for the United States in certain fundamental sectors. To handle this opposition, the USA and their allies will have to pursue a joint long-term strategy which exploits Russia’s vulnerabilities. So Rand analyses the various means with which to unbalance Russia, indicating for each the probabilities of success, the benefits, the cost, and the risks for the USA. Rand analysts estimate that Russia’s greatest vulnerability is that of its economy, due to its heavy dependency on oil and gas exports. The income from these exports can be reduced by strengthening sanctions and increasing the energy exports of the United States. The goal is to oblige Europe to diminish its importation of Russian natural gas, and replace it by liquefied natural gas transported by sea from other countries. Another way of destabilising the Russian economy in the long run is to encourage the emigration of qualified personnel, particularly young Russians with a high level of education. In the ideological and information sectors, it would be necessary to encourage internal contestation and at the same time, to undermine Russia’s image on the exterior, by excluding it from international forums and boycotting the international sporting events that it organises. In the geopolitical sector, arming Ukraine would enable the USA to exploit the central point of Russia’s exterior vulnerability, but this would have to be carefully calculated in order to hold Russia under pressure without slipping into a major conflict, which it would win. In the military sector, the USA could enjoy high benefits, with low costs and risks, by increasing the number of land-based troops from the NATO countries working in an anti-Russian function. The USA can enjoy high probabilities of success and high benefits, with moderate risks, especially by investing mainly in strategic bombers and long-range attack missiles directed against Russia. Leaving the INF Treaty and deploying in Europe new intermediate-range nuclear missiles pointed at Russia would lead to high probabilities of success, but would also present high risks. By calibrating each option to gain the desired effect – conclude the Rand analysts – Russia would end up by paying the hardest price in a confrontation, but the USA would also have to invest huge resources, which would therefore no longer be available for other objectives. This is also prior warning of a coming major increase in USA/NATO military spending, to the disadvantage of social budgets
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  410. “A team of researchers at the University of Adelaide have found that as many as 80 percent of tweets about the 2022 Russia-Ukraine invasion in its early weeks were part of a covert propaganda campaign originating from automated fake ‘bot’ accounts. An anti-Russia propaganda campaign originating from a ‘bot army’ of fake automated Twitter accounts flooded the internet at the start of the war. The research shows of the more than 5-million tweets studied, 90.2 percent of all tweets (both bot and non-bot) came from accounts that were pro-Ukraine, with fewer than 7 percent of the accounts being classed as pro-Russian. The university researchers also found these automated tweets had been purposely used to drive up fear amongst people targeted by them, boosting a high level of statistically measurable ‘angst’ in the online discourse. The research team analysed a massively unprecedented 5,203,746 tweets, sent with key hashtags, in the first two weeks of the Russian invasion of Ukraine from 24 February this year. The researchers considered predominately English-language accounts, with a calculated 1.8-million unique Twitter accounts in the dataset posting at least one English-language tweet. The results were published in August in a research paper, titled “#IStandWithPutin versus #IStandWithUkraine: The interaction of bots and humans in discussion of the Russia/Ukraine war“, by the University of Adelaide’s School of Mathematical Science. The size of the sample under study, of over 5-million tweets, dwarfs other recent studies of covert propaganda in social media surrounding the Ukraine war. The little-reported Stanford University/Graphika research on Western disinformation, analysed by Declassified Australia in September, examined just under 300,000 tweets from 146 Twitter accounts. The Meta/Facebook research on Russian disinformation reported widely by mainstream media, including the ABC a fortnight later, looked at 1,600 Facebook accounts. Reports on the new research have appeared in a few independent media sites, and in Russia’s RT, but not much else, so revealing the burial of stories that don’t fit the desired pro-Western narrative. This ground-breaking study, exposing a massive anti-Russia social media disinformation campaign, has been effectively ignored by the mainstream Western establishment media. It’s become almost routine during the Russia-Ukraine war. The Adelaide University researchers unearthed a massive organised pro-Ukraine influence operation underway from the early stages of the conflict. Overall the study found automated ‘bot’ accounts to be the source of between 60 to 80 percent of all tweets in the dataset. The published data shows that in the first week of the Ukraine-Russia war there was a huge mass of pro-Ukrainian hashtag bot activity. Approximately 3.5 million tweets using the hashtag #IStandWithUkraine were sent by bots in that first week. In fact, it was like someone had flicked a switch, when at the start of the war on 24 February, pro-Ukraine bot activity suddenly burst into life. In that first day of the war the #IStandWithUkraine hashtag was used in as many as 38,000 tweets each hour, rising to 50,000 tweets an hour by day three of the war.” - Peter Cronau, Declassified Australia, November 3, 2022
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  531. “A team of researchers at the University of Adelaide have found that as many as 80 percent of tweets about the 2022 Russia-Ukraine invasion in its early weeks were part of a covert propaganda campaign originating from automated fake ‘bot’ accounts. An anti-Russia propaganda campaign originating from a ‘bot army’ of fake automated Twitter accounts flooded the internet at the start of the war. The research shows of the more than 5-million tweets studied, 90.2 percent of all tweets (both bot and non-bot) came from accounts that were pro-Ukraine, with fewer than 7 percent of the accounts being classed as pro-Russian. The university researchers also found these automated tweets had been purposely used to drive up fear amongst people targeted by them, boosting a high level of statistically measurable ‘angst’ in the online discourse. The research team analysed a massively unprecedented 5,203,746 tweets, sent with key hashtags, in the first two weeks of the Russian invasion of Ukraine from 24 February this year. The researchers considered predominately English-language accounts, with a calculated 1.8-million unique Twitter accounts in the dataset posting at least one English-language tweet. The results were published in August in a research paper, titled “#IStandWithPutin versus #IStandWithUkraine: The interaction of bots and humans in discussion of the Russia/Ukraine war“, by the University of Adelaide’s School of Mathematical Science. The size of the sample under study, of over 5-million tweets, dwarfs other recent studies of covert propaganda in social media surrounding the Ukraine war. The little-reported Stanford University/Graphika research on Western disinformation, analysed by Declassified Australia in September, examined just under 300,000 tweets from 146 Twitter accounts. The Meta/Facebook research on Russian disinformation reported widely by mainstream media, including the ABC a fortnight later, looked at 1,600 Facebook accounts. Reports on the new research have appeared in a few independent media sites, and in Russia’s RT, but not much else, so revealing the burial of stories that don’t fit the desired pro-Western narrative. This ground-breaking study, exposing a massive anti-Russia social media disinformation campaign, has been effectively ignored by the mainstream Western establishment media. It’s become almost routine during the Russia-Ukraine war.” - Declassified Australia, November 3, 2022
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  539. “A team of researchers at the University of Adelaide have found that as many as 80 percent of tweets about the 2022 Russia-Ukraine invasion in its early weeks were part of a covert propaganda campaign originating from automated fake ‘bot’ accounts. An anti-Russia propaganda campaign originating from a ‘bot army’ of fake automated Twitter accounts flooded the internet at the start of the war. The research shows of the more than 5-million tweets studied, 90.2 percent of all tweets (both bot and non-bot) came from accounts that were pro-Ukraine, with fewer than 7 percent of the accounts being classed as pro-Russian. The university researchers also found these automated tweets had been purposely used to drive up fear amongst people targeted by them, boosting a high level of statistically measurable ‘angst’ in the online discourse. The research team analysed a massively unprecedented 5,203,746 tweets, sent with key hashtags, in the first two weeks of the Russian invasion of Ukraine from 24 February this year. The researchers considered predominately English-language accounts, with a calculated 1.8-million unique Twitter accounts in the dataset posting at least one English-language tweet. The results were published in August in a research paper, titled “#IStandWithPutin versus #IStandWithUkraine: The interaction of bots and humans in discussion of the Russia/Ukraine war“, by the University of Adelaide’s School of Mathematical Science. The size of the sample under study, of over 5-million tweets, dwarfs other recent studies of covert propaganda in social media surrounding the Ukraine war. The little-reported Stanford University/Graphika research on Western disinformation, analysed by Declassified Australia in September, examined just under 300,000 tweets from 146 Twitter accounts. The Meta/Facebook research on Russian disinformation reported widely by mainstream media, including the ABC a fortnight later, looked at 1,600 Facebook accounts. Reports on the new research have appeared in a few independent media sites, and in Russia’s RT, but not much else, so revealing the burial of stories that don’t fit the desired pro-Western narrative. This ground-breaking study, exposing a massive anti-Russia social media disinformation campaign, has been effectively ignored by the mainstream Western establishment media. It’s become almost routine during the Russia-Ukraine war.” - Declassified Australia, November 3, 2022
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  648. ‘A team of researchers at the University of Adelaide have found that as many as 80% of tweets about the 2022 Russia-Ukraine invasion in its early weeks were part of a covert propaganda campaign originating from automated fake ‘bot’ accounts. An anti-Russia propaganda campaign originating from a ‘bot army’ of fake automated Twitter accounts flooded the internet at the start of the war. The research shows of the more than 5 million tweets studied, 90.2% of all tweets (both bot and non-bot) came from accounts that were pro-Ukraine, with fewer than 7% of the accounts being classed as pro-Russian. The university researchers also found these automated tweets had been purposely used to drive up fear among people targeted by them, boosting a high level of statistically measurable ‘angst’ in the online discourse. The research team analysed a massively unprecedented 5,203,746 tweets, sent with key hashtags, in the first two weeks of the Russian invasion of Ukraine from February 24. The researchers considered predominately English-language accounts, with a calculated 1.8-million unique Twitter accounts in the dataset posting at least one English-language tweet. The results were published in August in a research paper, titled “#IStandWithPutin versus #IStandWithUkraine: The interaction of bots and humans in discussion of the Russia/Ukraine war“, by the University of Adelaide’s School of Mathematical Science. The size of the sample under study – over 5 million tweets – dwarfs other recent studies of covert propaganda in social media surrounding the Ukraine war. The little-reported Stanford University/Graphika research on Western disinformation, analysed by Declassified Australia in September, examined just under 300,000 tweets from 146 Twitter accounts. The Meta/Facebook research on Russian disinformation reported widely by mainstream media, including the ABC a fortnight later, looked at 1600 Facebook accounts. Reports on the new research have appeared in a few independent media sites, and in Russia’s RT, but not much else, so revealing the burial of stories that don’t fit the desired pro-Western narrative. This groundbreaking study, exposing a massive anti-Russia social media disinformation campaign, has been effectively ignored by the mainstream Western establishment media. It has become almost routine during the Russia-Ukraine war. The Adelaide University researchers unearthed a massive organised pro-Ukraine influence operation underway from the early stages of the conflict. Overall the study found automated ‘bot’ accounts to be the source of between 60 to 80% of all tweets in the dataset. The published data shows that in the first week of the Ukraine-Russia war there was a mass of pro-Ukrainian hashtag bot activity. Approximately 3.5 million tweets using the hashtag #IStandWithUkraine were sent by bots in that first week. In fact, it was like someone had flicked a switch, when at the start of the war on February 24, pro-Ukraine bot activity burst into life. In that first day of the war the #IStandWithUkraine hashtag was used in as many as 38,000 tweets each hour, rising to 50,000 tweets an hour by day three of the war. By comparison, the data shows that in the first week there was an almost total absence of pro-Russian bot activity using the key hashtags. During that first week of the invasion, pro-Russian bots were sending off tweets using the #IStandWithPutin or #IStandWithRussia hashtags at a rate of only several hundred per hour.’ - Peter Cronau, Declassified Australia 2022
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  1058. “A team of researchers at the University of Adelaide have found that as many as 80 percent of tweets about the 2022 Russia-Ukraine invasion in its early weeks were part of a covert propaganda campaign originating from automated fake ‘bot’ accounts. An anti-Russia propaganda campaign originating from a ‘bot army’ of fake automated Twitter accounts flooded the internet at the start of the war. The research shows of the more than 5-million tweets studied, 90.2 percent of all tweets (both bot and non-bot) came from accounts that were pro-Ukraine, with fewer than 7 percent of the accounts being classed as pro-Russian. The university researchers also found these automated tweets had been purposely used to drive up fear amongst people targeted by them, boosting a high level of statistically measurable ‘angst’ in the online discourse. The research team analysed a massively unprecedented 5,203,746 tweets, sent with key hashtags, in the first two weeks of the Russian invasion of Ukraine from 24 February this year. The researchers considered predominately English-language accounts, with a calculated 1.8-million unique Twitter accounts in the dataset posting at least one English-language tweet. The results were published in August in a research paper, titled “#IStandWithPutin versus #IStandWithUkraine: The interaction of bots and humans in discussion of the Russia/Ukraine war“, by the University of Adelaide’s School of Mathematical Science. The size of the sample under study, of over 5-million tweets, dwarfs other recent studies of covert propaganda in social media surrounding the Ukraine war. The little-reported Stanford University/Graphika research on Western disinformation, analysed by Declassified Australia in September, examined just under 300,000 tweets from 146 Twitter accounts. The Meta/Facebook research on Russian disinformation reported widely by mainstream media, including the ABC a fortnight later, looked at 1,600 Facebook accounts. Reports on the new research have appeared in a few independent media sites, and in Russia’s RT, but not much else, so revealing the burial of stories that don’t fit the desired pro-Western narrative. This ground-breaking study, exposing a massive anti-Russia social media disinformation campaign, has been effectively ignored by the mainstream Western establishment media. It’s become almost routine during the Russia-Ukraine war.” - Peter Cronau - Declassified Australia, November 3, 2022
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